WO2013049829A1 - System and method for multi-domain problem solving on the web - Google Patents

System and method for multi-domain problem solving on the web Download PDF

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Publication number
WO2013049829A1
WO2013049829A1 PCT/US2012/058328 US2012058328W WO2013049829A1 WO 2013049829 A1 WO2013049829 A1 WO 2013049829A1 US 2012058328 W US2012058328 W US 2012058328W WO 2013049829 A1 WO2013049829 A1 WO 2013049829A1
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Prior art keywords
user
access device
remote access
criteria
server
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PCT/US2012/058328
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French (fr)
Inventor
Debra J. HALL
Anthony G. LOMBARDO
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Dejoto Technologies Llc
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Priority to EP12835351.3A priority Critical patent/EP2761556A4/en
Priority to CA2850606A priority patent/CA2850606A1/en
Publication of WO2013049829A1 publication Critical patent/WO2013049829A1/en

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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q30/00Commerce
    • G06Q30/02Marketing; Price estimation or determination; Fundraising
    • G06Q30/0201Market modelling; Market analysis; Collecting market data

Definitions

  • the present invention relates generally to computer-based " decision systems and methods and, more particularly,, to a system and method for solving problems n multiple domains or subject matter areas on the web/internet,
  • Web-based decision aids are intended for use in human problem-solving, speciiieally to assist end-users - including consumers, professional intermediaries, technicians and other professional personnel - in decision-making within subject matters selected by the user.
  • An example of a decision aid is presented in U.S. Patent No. 7,761,345 to Marin et a.l.
  • subsets of criteria represent Selection Criteria that form the foundation for a. user's Overall Stated Importance for each category. While Overall Stated importance allows users to designate personal importance of each category by setting specific criteria to Not Important, Less Important or More important, it is the relationship between Selection Criteria and Overall Stated Importance thai is paramount.
  • the inteliigeni agent provides insight into the user's thought process through semantic processing, thereby teasing out inconsistencies as well as similarities within categories, across categories and across topics. Furthermore, by knowing what other users have done within a similar- domain, the intelligent agent can provide instant feedback to a user newly exploring a domain, for example:
  • users may not know the result they Want or Need, or users may kno they Want or Need a category of result but may be unclear as to the nuances as well as breadth of the various options; additionally, users may be initially predisposed toward a type of result that, upon introspection and coaching, is exposed as adverse to their Wants and Needs.
  • decisiomng within the system goes beyond effectuating a purchase or result that a user already knows that they want.
  • the system recognizes that both Wants and Needs drive behavior, and that oftentimes Needs eclipse Wants, as for instance when Needs pertain to medical requirements, or to financial or time constraints.
  • the system .contains logic such that Needs, trump Wants; specifically, an algorithm devalues potential results by assigning a higher weight to Needs than to Wants (note that an exception to this rule occurs when the Overall Stated Importance for a Need is less than for a Want).
  • Coaching by the inteiiigent agent transcends decision-making into outcomes of self satisfaction, self fulfillment, self awareness or success; within such an environment, results go beyond tangible products and services, such that they may include pursuing an entirely different course of action.
  • each returned provider varies in degree-of-fit of the same conceptual product (for instance, a Daycare facility, -a -Senio Living Facility, a University). Via percentage-based calculations, Single-Product providers are designated as Most Relevant, Relevant and Of Interest. Within the Multi-Product Method, returned providers, vary in degree- of-fit of potentially many products (for instance, Financial Investment. Alternatives, Preventive Health Measures, End-of-life Considerations).
  • a provider is not penalized for providing more products and services than a user ' s specified Wants- and Needs; rather, a provider is penalized only for providing less products and services; as such, in the extreme case, a user who selects zero criteria, whereby no Wants and Needs are specified, will be returned all providers as Most Relevant; however, as the user selects more criteria, more providers are disqualified as Most Relevant and Relevant providers.
  • This inverse relationship can be represented as follows:
  • an Overall Stated Importance of More important calculated for a Need category acts to devalue an provider whose corresponding attributes have a -less-than favorable match (determined via a. percentage-based calculation) regardless of isolated criteria producing a favorable match, or entire Want categories producing an overall highly favorable match. In such cases. Needs trump Wants, and a provider original iy deemed Most Relevant is devalued to Relevant; a provider originally deemed Relevant is devalued to Less Relevant.
  • the results container for the Multi-Product method does not point to a list of singular providers; rather, it evaluates every day Wants and Needs then translates those into potential products and services. Rather than present a pre-defined, static set of results for a single provider, then, apply user preference to narrow the choice, the system purposefully separaies providers' products and services from the user's field of choices, such that user selected criteria are evaluated to return results relevant to the user's Selection Criteria and Overall Stated importance.
  • the system harnesses technology to reduce the field of results to those with the highest degree of user-relevancy prior to presenting the set to the user, such that a decision is made from a customized solution set, containing only elements that have been pre-quaiifkd as being applicable to the user's Wants and Needs. Only after the user chooses a product or service to review does a list of qualified providers appear, each containing -a web Internet link/URL leading to provider-specific products or services.
  • Fig, 1 illustrates an. embodiment of the system of the invention where users connect through deskto computers, laptops, tablets and mobile devices to web servers, thereby gaining access to Ul, algorithms and databases of the system and, through the system, to third party server and. content;
  • FIG. 2 through Fig, 6 are examples of User inter ace renderings in an embodiment -of the invention
  • Fig. 513 also shows .an embodiment of logic used to manifest content display:
  • Fig. 7 lists ⁇ seif eam g behaviors intrinsic to an embodiment of the present invention., and that enable the system to filter results based on user demonstrated behaviors, as well as Persona-type behaviors, which act as baselines from which to compare users and determine relevancy;
  • Fig. 8 displays a graphic and a table; the graphic represents a visual cue, presented for end-user benefit, that summarizes user-stated level, of importance; the table represents test cases for calculating Overall Stated importance values;
  • Fig. 9 illustrates mapping within the Muiti -Product method, structured as a semantic network
  • Figs. 10 through 12 display instances of ontologieal relationships contained within the Multi-Product Method
  • FIGs. 13 through 17 display flow diagrams, use cases -and instances of conditional feedback tied to an embodiment of the present invention
  • Fig. 18 is an illustration of a mathematical, integer-based algorithm that can be used to represent user .choices in a manner, by which choices can be electronical iy compared to those of other users, and for the end-purpose of connecting users otherwise unknown to one another;
  • Fig. 19 through 22 are examples- of logic, tests & conditions which assess user input and drive intelligent feedback and display of results within an embodiment of the current invention
  • Fig. 23 is a flow chart depicting of the use action of accessing anew (adding) or updating a decision aid, which upon save, is displayed and stored within their member view of ihe website;
  • Fig. 24 is a flow chart depicting, the user action of accessing a saved decision aid. with the purpose of i) viewing displayed results ' and ii) being presented with options of connecting with other users based on the user's specified Social Share criteria, and with similarity to -other users as evaluated via the Social Connect method;
  • FIG. 25 is -a flow chart illustrating providers associated with user Stated Importance and Selection Criteria,, based on execution of either the Single-Product method or the Multi-Product method;
  • Fig, 26 is a flow chart illustrating method, for displaying a social blog, expertise or agent feedback, based on user request and the format of the associated content:
  • Fig. .27 is a flow chart showing adding, displaying and -editing user profile information, which is used to permit saving of decision aids and connecting with other users;
  • Pig. 28 is a flow chart illustrating a method for determining the visual display elements appropriate to disclose to other users, based on the originating user's specified Social Share criteria;
  • Fig. 29 is a flow chart illustrating a structured process for creating proprietary Content Input Forms which are tied to decision, aids by subject matter and which capture products and services from either Single-Product or Multi-Product Pro viders;
  • FIG. 30 i a flow chart showing a method for displaying, via intelligent agent recommendations, content of higher-order relevancy from a proprietary database, which is based on criteria either within a. user-specified decision aid, across user decision aids, or across users who have demonstrated similarity in preferences;
  • Fig. 31 is a -flow chart showing a method for determining -the visual display of icons for the decision aids, based on updates to the decision aid by users, by providers or by the intelligent agent;
  • Fig. 32 is a flow chart illustrating a method for determining compatibility or percentage similarity of users' decision aids:
  • Figs. 33.a-3.3f present an example walkthrough of user interfaces in an -embodiment of the present invention that are common across Single-Product and Multi-Product Domains, and where Fig. 33-b, 33-c, 33-d and 33-e provide an embodiment of the Single-Product Domain, specifically i) selecting criteria and level of importance, ii) viewing Intelligent Agent feedback, iii) accessing social postings, and iv) reviewing relevant results,
  • a web-based decision aid for use across domains to assist in human problem solving.
  • Advantages of embodiments of the present invention include, without limitation, assisting the user in making decisions through intelligent agent expertise, as well as through related eComrnerce, social networking, guided content search and delivery of context-rich content,
  • web profiles typically define members in their entirety, such that preferences are tied to a profile as a whole
  • embodiments of the present invention delineates a member's preferences based on specific subject matter areas, assessing those preferences by implicit and explicit user behaviors.
  • any decisio aid can be easily added, deleted or updated, without disrupting or altering social interactions, eCommeree and search capabilities related to a member's other decision aids.
  • Fig. 1 illustrates an embodiment of the system of the invention.
  • Users via browser- enabled controls available on remote access devices such as smart phones, tablets and personal computers (1101 through 1 103), connect -to one or more web servers (1109) containing an embodiment of the invention's algorithms, data schemes and databases, through load balancing and clustering technology shown in 1104 and user and provider portal cluster or internet 110:5,
  • 1106 and 1 107 represent access to the system's Content Management System 1 108, enabling creation of proprietary content, as well as management of links to third-party products, services and content deemed relevant to the user, as determined by ontoJogical subsets and percentage-similarity calculations described, in Figs. 9- 12 and Figs. 19-22, discussed below.
  • Figs. 2 A through 4B there are shown wireframes and renderings representing screens in an embodiment of the present invention's user interface.
  • the graphical displays are shown to convey primary interfaces - namely Add/Update Profile & Domains, Choose Wants & Needs and View Results - not .as limitations of the user web- experience, which includes overlay windows, mouse-over tool tips and browser windows,
  • a wireframe for Add/Update- Pro file & Domains is displayed, where 1201 permits user -access to previously saved decision aids ⁇ those for which Wants and Needs have been chosen by the use -earlier, either during the current session or a prior session.
  • 1201 permits user -access to previously saved decision aids ⁇ those for which Wants and Needs have been chosen by the use -earlier, either during the current session or a prior session.
  • 1 Within the container 1201 , as with other containers within the system, are reveal/hide controls, a scroll bar to access content beyond that displayed within the boundaries of the container, and active-click labels used to launch content.
  • the container represented by .1202 indicates a container through which a user may choose from decision aids to add. to their member account; specifically, the container lists al l possible decision aids, grouped by topical neighborhood , The container represented by 1203 permits user access to Other's Decisio Aids; this container lists all decision aids created by other members who have granted the user permission to review and comment on their decision aids.
  • 1204 indicates a Sign-in / Sign-out capability
  • 1205 indicates a container for adding or updating a user profile, for which- example mandatory fields include Unique User Name and Password, Verified email Address and User birth Year.
  • the My Connections container represented by 1206 permits users to establish a master list of family members and friends, from which the user later grants review & comment permissions for decision aids, determined by the user on a ease-by-case basis versus en masse.
  • My Connections are initially established by specifying an email address contained within a member database; in cases where an email address oasts, a connectio confirmation message is displayed, along with associated User Name.
  • the list of all those members within a user's My Connections list is displayed on the user-specific view of the homepage.
  • 1207 indicates Help, About and Terms & Conditions links
  • inset 1208 is a graphical rendering of the wireframe after a user has created an- account and added decision aids. An -enlarged view of graphical rendering is- provided as Fig. 2B.
  • Fig. 3 illustrates a graphical rendering of Choose Wants & Needs, where 13-01 enables a user to name the decision aid, and where 1302 represents a container for capturing high-level filter information.
  • user-demographics are used to narrow resultant datasets that are retrieved from the web/Internet. Beyond cross-domain filters such as birth year, the value of which is captured at the profile level, certain filters are domain-specific, or arc relevant i multiple but not all domains.
  • Location for example, is necessar within a Financial Assets domain to parse-out banks thai do not operate in certain U.S. states, This filter isolates location- relevant providers from the universe of all providers identified as potentially relevant, thereby preventing the display of non-meaningful banks. Location is also applicable to domains returning relevant facilities (for example, Senior Living, Golf Courses); in such cases. Location narrows the universe of providers to a subset satisfying a true condition of user-chosen geo- centricity.
  • third-party tools are used to streamline and/or expand the Location example.
  • the user interface allows users to enter city/state versus zip code; here, third-party apps are leveraged to convert, city/state to zip code.
  • the user interface allows users to enter a search radius from the specified city/state or zip code. Again, third-party apps determine all zip codes within the specified radius; that series of zip codes is then used to retrieve the subset of relevant providers.
  • results for the decision aid are filtered through an Exception Rule Base; the same Exception Rule Base i applied to Single-Product Domains and to Multi-Product Domains, For example, birth year is relevant for domains such as Senior Living and Healthcare, among others.
  • Exception Rule Base i applied to Single-Product Domains and to Multi-Product Domains, For example, birth year is relevant for domains such as Senior Living and Healthcare, among others.
  • an intended Senior Living Facility search is for an aged senior, 85 years or older. If the user selects a Want (hat could return a result more suitable for a younger, more active senior, then results are tempered to reflect the birth year filter.
  • a facility tagged as an Active Adult Community, and that without the ilter would otherwise be displayed as Most Relevant, is discounted to Relevant; a facility otherwise displayed as Relevant is discounted to Of interest..
  • Exception Rule for discounting results can be understood as follows: for any product calculated as Most Relevant and that contains potential exception content, assess a rule base [Ri -.R ⁇ l for limits to the exception content. For example, if Rule K states ''Active Adult Community" ⁇ ⁇ ; 8 Years" for birth year, and if the exception test fails, then discount the product from Most Relevant to Relevant, or from Relevant to Of Interest. The discounting algorithm is not applied if the product is originally returned as Of Interest, since no tier exists beneath Of Interest. [0051 J Now, still referring to the. screen shown in Fig.
  • 1303 indicates a container from which the user grants review & comment permission to family members and friends, specifically for this decision aid, regardless of permissions granted for other decision aids.
  • a user follows a two-step process, where establishing and managin My Connections, described in Fig. 2A, item 1206, are. treated separately from inviting others to view specific decision aids. Specifically, having a member within My Connections does not in.
  • Stated Importance values of Less Important and .More Important are treated equally -namely as a Hag that the criteria/goal has been selected b the user.
  • Stated Importance values are used for Intelligent Agent feedback and as reminders/cues to the user, versus weighing results providers.
  • Multi-Product Domains results are weighed based on recurrent instances of products satisfyin user-specified goals.
  • the system addresses common challenges of survey validity, including (i) low incentive to complete, (ii) perceived risk, of responding truthfully, (Hi) ego inflation, (iv) misinterpretation of queries, (y) Jack of qualifying feedback during the survey, and (vi) mid-point non-committal response to requested Level of Importance.
  • selected criteria confront these challenges directly, thereby dramatically improving reliability of user responses, and therefore of result relevancy.
  • the. screen of Fig. 3. at 1306 contains further instructions for saving user choices, then viewing intelligent Agent feedback and recommended results.
  • Figs. 4A and 4B shows a graphical rendering of View Results, where 1401 enables a user to toggle between Blog containing Intelligent Agent feedback, and social postings from family members and friends; however, if in Fig. 3, item 1303 the user chose to designate the decision aid as private, the social postings tab in 1401 is void of postings—ts. sole contents are instructions- for granting review and comment permissions, via item 1303.
  • the Intelligent Agent's Blog contains no Relevancy headers, such as those used to display product results. -Specifically, no mathematical calculation is used to sequence the display of Intelligent Agent feedback; rather, the display bears a 1 : 1 relationship to the sequencing of user-state ' d goals, which is static within an embodiment of the present invention, and is determined by content authors when goals are authored. In cases wher two goals produce the same Intelligent Agent feedback, only .the- higher occurrenc is displayed (this prevents a specific statement from being redundantly displayed in the same container, at the same time).
  • 1402 displays criteria that the user selected, as described in Fig. 3, item 1304. Only chosen criteria are displayed, not their associated level of importance.
  • the containers within 1 03 and 1404 (Fig. 4.4 ⁇ indicate results of Multi-Product Domains,
  • the containers within 1405 and 1406 (Fig. 4B) indicate results of Single-Product Domains, Specifically. 1404 displays whenever a user clicks on a product label within 1403; and 1.406 displays whenever a user clicks on a provider label within 1405. In this manner, intelligent Agent feedback and detailed result descriptions are extracted based on user action.
  • a text container indicating the output of the system ' s Internet/web Search String Generator.
  • This generator produces ontological representations for ail products that the system ' s Intelligent Agent recommends.
  • the system displays a separate search string (via a drop down box) such that each search .string contains the product name, plus the ontological representation of that goal
  • the search string which, is generated automatically by utilizing the system's ontological schema, may be overridden via a content author's manual edits,
  • a relevant product is 529 Plan (Product: P)
  • 529 Plan has only one user-selected goal which triggered its placement within the relevant products subset
  • a single search string is displayed, its contents dependent on the ontological representation of the user-selected goal not of the product-— for which an instance may be:
  • a relevant products (RP) subset containing three products (Pj, *, P; thai are all ontologically codified as Class M (C ), will give 3 ⁇ 4 a count of 3: within the same relevant products subset, two products (3 ⁇ 4, Pj) ontologically codified as Class N (CN). will give C a count of 2.
  • CM along with product family members Pj, Pj and P will precede CN and its product family members P 4 and P 5 .
  • product family occurrences translate into degree of relevancy for each product family. When, applied to the interface rendering within Fig. 5 A, these class and product designations become;
  • real estate limitations may restrict the display of products per family, resulting in the need for a user control such as the arrow next to Roih 401(h) in 1502—such user controls indicate to the user that additional products, in this case P 3 , : are also placed in the results basket for the product family called Retirement Funds ⁇ H ms. in further explanation, still considering the relevant product subset containing the following five products:
  • the esults engine continues to count products within their product families, then displays produei compete in descending order of occurrence.
  • administratively-set thresholds may be used to further designate whether a product family is displayed beneath the Most Relevant or Relevant label. For instance, within Multi- roduct Domains, an embodiment of the present invention sets the number of Most Relevant families at a default value of five (5) families. In instances where no more than 5 families are relevant, then no Relevant label is displayed.
  • Relevant Products Is the subset of products; identified by intersecting the Potential Relevant Products set (PRP) with user-state goals [00721 2. TRUE, refers to the number times a particular product is identified via the PRP and user-stated goals intersection
  • an intelligent Agent feedback tied directly to products is displayed along with the product and therefore is tied to the relevant products (RP) subset intersection, with user-stated goals, which dictates relevancy display for products.
  • RP relevant products
  • a single instance of Intelligent Agent feedback is used for multiple products, then it is displayed for each, of those products; within the system, this repeated display is not considered redundant, since it can never appear visually in the user interface at the exact same time, in further detail, still referring to Fig.
  • each self-learning method becomes an additional Internet/net search results filter.
  • the results routines allow for filters to be added, removed or modified without changes to untouched -filters *
  • Adaptive algorithms within he system are based on action and inaction of each user, as well a representative behavior (Persona-type X) for each user.
  • the outcomes of these algorithms are refined Intelligent Agent suggestions (that is, a reduced set of statements, products & .services deemed relevant to the user).
  • Algorithmic categories applied to the system's Intelligent Agent include those shown in Fig. 7, such as the agent's ability to learn to (i) ignore, (ii) append, (iii) befriend, (by.) suggest, (y) refine and (vi) be current,
  • Adaptive & non-adaptive methods are applied to the system's neural network engine.
  • Non-adaptive methods drive the neural network engine's co nectionistic behaviors-—that is, the mapping of inputs to relevant results.
  • the adaptive methods focus on Persona-types assigned to like-users, and are implemented via a threshold-assigned similarity in profile attributes and stated Wants and Needs. Each. Persona-type then filters the displayed results, thereby refining results to reflect behaviors captured within the Persona-type.
  • an embodiment of the present, invention enables business-rules to dictate when the neural network engine performs self- adjustments, whereby for any filter Fj the input and/or output nodes of the neural network, assimilate the properties defined by Fj .
  • This progression of i) non-adaptive, to ii) adaptive via filters,, to iii ⁇ fully self-adjusting, enables business-driven thresholds and rules to dictate modification to the neural network, rather than granting it organic behavior.
  • Semi-automatic updates allo tmnsformation of the network, without encountering ill consequences inherent in. automatic updates being contemplated for Ai systems.
  • filtering is a function of the frequency of CN ( ⁇ of CM clicks enacted by a Persona-type) as compared with frequency of each related concept within the ⁇ ci- Cj3 ⁇ 4;.. Filtering within the system also occurs at the Product Family level, where Product Family is synonymous with the construct Class, allowing removal, demotion or promotion of a Product Family results based on frequency of Persona- type access. Multi-Product Domain results, beyond being based on an oi tological match to user queries, are affected by any Persona- type discounting/promoting methods.
  • Implicit cues include i) selection of criteria under Wants & Needs, and ii) clicks on Intelligent Agent feedback. Links and products. Explicit cues take the form of "'interest/satisfaction'' checkboxes labeled -Save and— Share.
  • the system's Save checkbox is located next to. each, intelligent Agent feedback and resulting product. Whenever a user checks ⁇ Save, a link to that content appears in the— Save container,, facilitating future retrieval, review & action by the user.
  • The— Save container is available via the home page ⁇ Figs. 2 and 33-f), displaying links to all content that a user has flagged for future review regardless of whether the user has modified Wants and Need and possibly removed the content from coaching and results containers for a specific domain,
  • the present system's Share checkbox is located next to each product. Whenever a user checks -Share, link to tha content appears in the user's ''Postings" blog, with an automatic statement asking family & friends to review the product and provide comments. Family & friends can click the link within the blog to -review the product, which may no longer appear in the results container if the user has modified Wants & Needs. When family & friends click the link, data analytics regarding usage/review/access are updated.
  • FIG. 8 summarizes, per Want category and Need category, user- stated level of importance.
  • An algorithm applied to underlying criteri is used to generate a visual cue indicating whether the user weighed the category higher or lower in overall importance; effectively, the three-positio control, for user-stated level of importance results in a visual reminder to users and their invited friends & family, as to what's important to the user.
  • a table displays test cases for the algorithm, an embodiment of which appears in Pig. 19.
  • Fig. 9 visualizes output of the Multi-Product Domain method, wherein a neural network utilizes a proprietary Is-a" based ontology that, although exact in structure across subject areas, contains unique identifiers for each domain, thereby enabling th mapping of user selected criteria (1901 and 1902) chosen from eight categories of Wants and Needs, to related products and services (1903, 1904 and 1905).
  • the system's neural network engine functions offline. Although its output is necessary to generate relevant results for users, the engine itself doe not run during a user session.
  • the file produced by the neural network engine, which is then accessed runtime to determine user results, is an MxN matrix of Potential Relevant Products (PRP), where M represents the total number of products within the universe u, and N is . the total number of criteria (or goals) within the universe- ⁇ 3 ⁇ 4, such that each column corresponds to a goal.
  • PRP Potential Relevant Products
  • M represents the total number of products within the universe u
  • N is . the total number of criteria (or goals) within the universe- ⁇ 3 ⁇ 4, such that each column corresponds to a goal.
  • the value in cell PjGs is true when the Nxl matri for Pi multiplied by the Nxl matrix for Gs equals the Nx l matrix for G5.
  • PRP is an extraction of products that are ontologjcally aligned with goals; this extraction method is used within Multi-Product Domains t produce the PRP, and within Single-Product Domains to identify Potential Market Links (PML).
  • the first row within Fig 10 indicates PRP ske f execution timing and purpose. Beyond being the set from which relevant products are calculated for each user, the MxN matrix, of Potential Relevant Products is utilized by content authors to write Intelligent Agent feedback based on Goal-to-Product relationships defined within the MxN matrix. Still referring to Fig.
  • the PRP solution set is produced using the same method that calculates the Potential Market Links (PML) solution set; the PML is required by Single-Product Domains to determine which goals map to which Market Links (consumer retail products).
  • the third row within Fig, 10 indicates PML size, execution timing and purpose.
  • Relevant Products (RP) is a subset of the PRP solution set, and is calculated runtime based on the intersection of goals selected b a user, and those products within the PRP thai are associated with user-selected goals.
  • RP i produced using the same method that calculates the Relevant Market Links (RML) subset within Single-Product Domains, used to determine which Market Links within the PML solution set are associated with user-selected goals.
  • RML Relevant Market Links
  • RR Relevant Results
  • the inference algorithm that drives neural network engine mapping is used solely to ma goals to products; however, separate methods are used to execute intra-mapping of products and goals.
  • P2P Product-to-Product mapping-
  • I xN binary matrix multiplier method fails to produce real- world results: while this method can produce a subset of results mathematically, its outcome inadequately reflects relationships produced through human cognition.
  • the system uses a derivative method of the one that generates Single-Product results.
  • this method calculates "percentage fit.” This P2P capability becomes an important machine self-learning opportunity: enacting this method allows the Intelligen Agent to comment on related products, and to return "near products” that Goal-io-Produci mapping does not return. Beyond the machine self-learning benefit, this method reduces the need for content authors to create additional (though minimally dissimilar) goals to point to products not currently returned via the MxN matrix. Using this method, the system's Intelligent Agent is essentially saying, "The similarity of this product, is so strong to another product I've suggested, that ⁇ am including it with your results '
  • Goal-to-Goai mapping within the current embodiment, of the invention, utilizes a method supplemented by human assistance; for any goal chosen b a content author within the system's Content Management System, all other goals that contain, the same class but different subclasses are displayed to the author. This displa is an indication to content authors that goals may be contradictory, or that intelligent Agent feedback, should be written to clarify (dis)similarity of the goals.
  • the intelligent Agent Rather than allow the inference engine to remove products of a contradictory nature (an action that, without further contextual input from the user, may produce erroneous results), the intelligent Agent prompts the user to conduct "housekeeping' ' on selected goals, thereby further removing products returned to the user.
  • the system ' s ontological schema is structured specifically to facilitate the conceptualization of decisioning, with the ontology ' s two primary constructs being Classes (with Super Class, Class & Sub-class subsumption) and Attributes (with Attribute and Sub-attribute subswnption); these constructs are "hinged" by intention, which forms the core of human decisioning.
  • Such a schema provides less cognitive challenges for content authors utilizing the ontology, thereby reducing authoring errors that are common with complex ontologies, yet providin the power .of linking concepts (for instance, goals to products) across specified domains.
  • goals are equivalent to queries, while products become targeted objects of those queries.
  • the ontological structure for products mirrors the ontological structure for criteria, or goals; however, they differ regarding the minimum and maximum number of identifiers used to classify each.
  • the restriction placed .on goals mathematically forces goals to be a potential subset of products, such that for the universe of goals f Gi. ; ) and products (Pu).
  • G K goals which are subsets of products (3 ⁇ 4), so that G ci P K .
  • G K goals which are subsets of products (3 ⁇ 4), so that G ci P K .
  • a goal will always have I intention and 1 Attribute, but may have 0 of the remaining identifiers; a product will always have at least 1 of every type of identifier.
  • subordinate relationships i) Super Class is sub-ordinate to nothing
  • vti Sub-attribute is sub-ordinate to Attribute [0093]
  • This schema generates output meaningful io humans by enabling machines, via subset calculation, to link richly-defined products to singly-defined goals.
  • methods by which subsets are extracted include linear algebra methods, such as multiplication of binary matrices.
  • goals need to be purposefully exact— ersus being compound or linguistically complex. It is within the combination of .singly-defined goals that complexity lies, but combination of concepts is handled by the machine, not the user, therefore reducing human cognitive load and increasing the machine's ability to isolate human intention, contradiction and validation.
  • Fig. 1 2 visualizes sample product N (13 ⁇ 4 ⁇ ; along with sample goals A, B and C, shown as G A> 3 ⁇ 4 and QQ.
  • IxN matrices allow a mathematical result of true when specific instances of products and goals (1), result in [P ⁇ ]*[Gi]-[G f ].
  • Matrix multiplication shows that the ontological encoding of GA C . P n and Ge c PN; however, the selected intention within Gu (identified in Fig. 12 with an ⁇ prevents if. from being a subset of PN, such that G & t P .
  • the system ' s Content Management System automatically activates an ordinate whenever a content, author selects a suh-ordinate; such auto-classification ensures, that meaningful subsets are not dismissed (a risk that could occur if content authors were responsible for manually tagging subsumption).
  • a content author ma select the Subclass Term Insurance when classifying a goal or a product; in this case, the system's Content Management System automatically activates the Class Life and Super Class Insurance, if a content author selects the Sub-attribute Tax-free Growth, the system's Content Management. System automatically activates the Attribute Tax-related.
  • the system's ontological schema facilitates behavior mining; specifically, goals and intentions (where intentions are synonymous with Want and Need categories, and are reflected 1 : 1 within the ontology as Intent) intrinsic to user experience are codified with every click, eliminating commonplace predictive modeling that is based on disparate, non-contextual clicks.
  • the user is stating behavioral intent, the tool is aggregating & cross-validating those stated intentions; in such a model, semantics enjoys a one-io-one relationship with user action. Pitfalls of prediction are removed.
  • Data analytics are not based on. browsing behavior, but rather on state intent as an explicit qualifier to selected criteria or implicit clicks.
  • the system ' s ontology represents concepts such that machine-based methods can produce meaningful conclusions specifically to facilitate human decisioning in compressed, timeframes and with- more robust connections, than is otherwise impossible without inordinate human effort.
  • the system's ontology is architected to span domains without violating the underlying raeta- model or schema.—hai is, modeling of domains within the system follows a standardized schema versus requiring disparate ontological structures per domain. Genesereth and Nilsson's 1987 definition of domain conceptualization postulates that for domain D, a set of relations R holds unique meaning, and is represented as ⁇ D, R . Modeling within Genesereth and NUsson, disparate domains leverage varied taxonomic. non-taxonomic, partonomic and instantiated relationships; effectively, domain drives structure. Within the present system, however, this one- to-one hypothesis is challenged, such thai structurally:
  • the system ' s Content Management System illustrated in 1 108 in Fig. 1 and as indicated by Fig. 13, satisfies three (3) roles: Administrator, Editor and Author. However, the number of Use Cases -is five (5), as the CMS supports two types of Administrators and two types of Authors.
  • One person may fulfill multiple roles: for example, within business-to-eonsumer (B2C) domains, one person may serve as Administrator, Editor and Author. Likewise, within business-to-business (B2B) domains, a corporate customer may collapse the. roles of Administrator and Editor. Relationships between roles shown in .Fig. .13 are described as
  • This use case contemplates an overall administrator for the CMS tool, spanning all domains, both B2B & 82 C, and having authority over all CMS users.
  • the Overall Administrator will be abie to add or remove users of the CMS, and to perform all functions available within the CMS.
  • the primary function of the Editor is to update the status of content from pending to eithe approved or rejected.
  • the Editor serves in a traditional editing role, and has authority to syndicate authored content to qualified reviewer (Subject Matter Experts) such as functional supervisors, legal professionals, marketing personnel and members of R&D.
  • a Domain Editor may designate Subject Matter Experts edit the content directly within the CMS (thereby avoiding the need to copy/paste content into third-party communication tools), by having the Administrator add the Subject Matter Experts, and grant them Editor status.
  • Full CMS Authors add content; likewise, they mark existing content as updated or slated for deletion. Since these authors do not directly post updated or deleted content, the production files are secure from erroneous/accidental edits, ' Full CMS Authors have permission to modify content that they did not originally author, since quality control (editor approval) ensures validity of modifications.
  • Figs. 14 and. 15 (00981 Still referring to the system's Content Management System, within Figs. 14 and. 15 are shown logic flows. The data inputs, processes, decision -points and outputs within Figs, 14 and 15 are represented with fully contained descriptions, such that persons reasonably versed in reading logic flows may recreate the system's CMS functionality.
  • Complementary Goals are used to focus a user on repeating , themes- within their stated goals, and therefore brin focus as they consider results.
  • Goal relationships specified within Unchecked Goals mirror those used to- develop Complementar Goal Statements, since the sole difference is that in the former instance, the user has- tailed to check a related .goal, whereas in the later, the Intelligent. Agent is commenting on the relationship of the selected goals.
  • contradictory auto statements are limited to discussing 2 related goals at a time, variations of which are displayed in Fig. 11.
  • auto-connecting users based cm the percentage similarity of criteria they choose for a decision aid, facilitates collective intelligence; the method identifies users whom a user may not know, but who are. decisioning within the same domain.
  • algorithms are used to mathematically assign integer values to user selected criteria and level of importance, as integer attribution can be used to compare decision aids of multiple users and, more important, to flag those users who have decision aids with similarities (based on thresholds which may be administratively raised or lowered over time).
  • Fig, 18 there is shown the output table of an algorithm that can be used to- mathematically -assign integer values to users' preferences of a decision -aid, resulting in the ability to compare decision aids and alert users of others who have decision aids with similarities in user preference.
  • Need 1 N
  • .i for example, for each user of a particular decision aid, has been assigned integer values correspondin to stated importance (as shown beneath the Value header, where 1 and 2 represent Less Important, and 3 and 4 represent More Important), as well as across underlying selection criteria, where 1 indicates user selection of that criteria, and 0 indicates disinterest of that criteria.
  • These values are then compared to produce 2803, 2804 and 2805, which represent the similarity percentage per Want or Need, as well as the overall similarity between the decision aids of two users.
  • This method .results in a "Connect Me” function, whereb Social.
  • Figs. 19 through 22 the formulas represented in Boolean terms are not intended to be specific to any particular programming syntax; not are they presented as limitations, of the invention. Rather, these formulas, are presented as embodiments of calculations from which the system derives user relevancy and intelligent Agent feedback, As example, in both Single-Product Domains and Multi-Product Domains, the states Not. important and More important are used within Intelligent Agent feedback to coach the user toward selecting more criteria—when a majority of goals remain in the default state of Not Important— or to lessen the level of importance in cases where a majority of goals has been designated by the user as More Important. In these instances, example Intelligent Agent feedback reads as follows:
  • Equations used to determine if either of the above conditions is true are represented in Fig. 20.
  • Figs, 21 and 22 the logic represented in Fig. 21 is referenced within Fig. 25; for Fig. 22, for each Single-Product Domain within the system, a 1 : 1 mapping aligns user-selected criteria with offerings of providers. Although exceptions violate this rule, all data, that is used for comparative purposes is a 1: 1 relationship. Offerings of each provider are entered via a Provider inpu Form— secure, web-accessed tool used by provider personnel (authors) to turn offerings on or off. Although the system's Conten Management System captures this Provider Input Form data offline, the mapping of user-selected criteria to offerings occurs runtime.
  • an exception occurs for the fourth Need category within certain domains—called Future Needs, in these instances, providers are not evaluated against the Future Needs category; rather, goals in this category are solely used, for coaching/pedagogical purposes.
  • Goal-to-Goal mapping method goals within Future Needs that, are complementary or contradictory to other goals are displayed for content authors to review, append and/or customize.
  • Intelligent Agent feedback is displayed, forewarning of contradiction, or emphasizing benefits of similarities.
  • each provider within Single-Produci Domains is a standalone set against which a user ' s selected goals are compared, via the percentage-based assessments and the devaluing algorithm displayed in Fig. 22, These comparisons are: executed runtime, coinciding with user input.
  • results within the system are returned based on percentage applicability— calculated per category initially, then devalued per category prior to determining an overall percentage applicability (which in itself my be devalued further)— in cases where two results earn equal percentages, then they are displayed in order of assessment. Note that self-learning filters can affect this order, whereby if users access one- result more frequently, then its display may be promoted.
  • Algorithms withi the system utilize these constructs in differing -combinations to establish "context ' ' as well as a coach's "fr me-of-mind" (even if. from a Cognitive Load Theory point of view, a user is unaware of intricacies or repercussions inherent within the context).
  • Via feedback provided by the Intelligent Agent results "feel right” from a human-coaching point-of- view.
  • the algorithm displayed in Figure 22 devalues providers within Single- Product Domains according to rules thai a real-world coach would apply.
  • Figs. 23 shows the user action of adding or updating a decision aid to the sy stem:, whereb 10 indicates that the user reviews a list of decision aids, each representing a particular subject, matter and grouped within neighborhoods of content, i further detail, .1 1 indicates that the user provides domain-specific ' filtering criteria, such as search location,, via checkbox, radio button, data entry field, drop down control or other input device common to user-interaction on the web.
  • domain-specific ' filtering criteria such as search location,, via checkbox, radio button, data entry field, drop down control or other input device common to user-interaction on the web.
  • Block 17 indicates the user's option to save to a member account or to cancel choices associated with the decision aid; and 18 indicates a decision point for the user, allowing further self-representation via subject matters for which additional decision aids are available through the system.
  • Fig, 24 there is shown the user action of viewing system results based on user preferences defined in Fig, 23. in particular where 20 indicates the user action of choosing a -decision aid from the se of 1 to m decision aids, where m is limited only by the instances of decision aids the user has added to their member account, since multiples of any single aid may exist within a member's account, effectively resulting in countless instances of decision aids.
  • the user may consider intelligent feedback, eCommerce products ' and services, as well as collective intelligence provided by family and friends, the later only in those instances where the user has designated others with whom to share the decision aid, versus marking it private.
  • Fig. Still referring to Fig.
  • test 21 tests whether the decision aid has been marked social or private, resulting in 22 if social and 25 if private. ' Within the display of a social postings in 22, the test represented by 23 determines if users neither-specified-nor- potentially- known to the user have demonstrated threshold-based similarity in user preferences for the -same decision aid; when true, 24 is displayed, offering to connect the user to similarly- minded, users.
  • step 25 tests the domain-type of the decision aid, displaying Single-Product results in 26, and Multi-Product results in 27.
  • step 25 tests the domain-type of the decision aid, displaying Single-Product results in 26, and Multi-Product results in 27.
  • step 28 displays the display of Market Links, which follow the display of 26 but not 27, since Multi-Product domains specifically do not contain Market Links.
  • 29 displays a feature common to both types of domains: Intelligent Agent feedback provides coaching tailored to user preferences and to products deemed relevant to the user, and presented for user consideration.
  • Step 30 indicates a user action to view a decision aid, Multi-Product Domains will always fail the test shown in 31,. and will thereby result in 32, which is the display of Multi-Product Domain containers; otherwise, the test indicated by 33 queries a proprietar database for the presence .of -Single-Product Pro viders available to be displayed for user consideration.
  • the subset of providers within 33 excludes those providers failing, to meet geo-centric and other domain-specific filters provided by the user; in addition, the subset excludes content that Persona-type and machine-learning filters, as defined below, deem irrelevant to the user; all other providers are contained within the subset -of 33, and therefore must be assessed for degree of relevanc to the user.
  • tests 34 and 36 determine whether -the provider via percentage similarity calculations applied against use preferences, an instance of which is described in Fig. 21 , as well as devaluing methods, an. instance of which is described in Fig. 22 is deemed Most Relevant or
  • step 40 indicates the user action of choosing to acces either social postings— whereby famil and friends have been granted permission to review and
  • a user establishes user . profile data, thereby granting membership benefits to the user, such benefits including user ability to save decision aids for later access, to invite family and friends to review and comment upon certain decision aids, and to keep other decision aids private.
  • 51 tests if the user is signed- ⁇ as a member and, if true, captures profile updates, in 55 and displays those updates in 56 for user confirmation.
  • 52 requests that the user establish membership.
  • the test shown in 53 validates the membership attempt, and if true, captures and displays remaining membership information in.55 and 56; otherwise, if false, 54 warns the users that decision aids can neither be saved nor shared without first establishing valid membership.
  • Fig. 28 there is shown the user action of accessing a decision aid defined by another user, and for which permission to review & comment has been granted.
  • 60 indicates that a user has selected-— from the View Others " Decision Aids container identified in Fig. 2A, item 1203— to access another member's decision aid.
  • 61 indicates the visual display of that decision aid's Wants and Needs, as well as its results, while 62 indicates that a Postings thread is displayed in the feedback container, rather than the Artificial Intelligent Agent's blog that is shown in Figure 4A. item 1401.
  • Fig. 28, 65 and 66 respond to the user request to review Intelligent Agent feedback.
  • Fig, 29 there is shown the knowledge engineering process to create and map a Provider Input Form based on a decision aid, where the Provider Input Form enables providers a method for posting products and services.
  • Such product and sendees may, through similarity matching algorithms for Single-Product Domains, or through ontologica) subset analyses for Multi-Product Domains, be deemed as relevant, to user preferences within the decision aid. Integral to the function of Fig.
  • 29 is a knowledge-mapped target domain, constructed via a knowledge acquisition process and populated via electronic forms or surveys,, stored in proprietary database form, and having records within its search domain that reflect, either directly or through related ' products and services, the universe of potential -user-specific criteria tied to Wants and Needs, in further detail, still referring to Fig.
  • 70 indicates the content engineer's decision of initiating a new Content input Form based upon one of two proprietary templates; 71 and 72 indicate the content engineer's action of mapping a decision aid's four Want categories, four Need categories, and relevant underlying criteria into the Content Input Form for Single-Product Providers, who are to be evaluated as Most Relevant, Relevant or Of Interest based on user preference; 73 indicates the display of the newly defined Content Input Form for Single-Product Providers. Items 74 through.
  • Multi-Product Provider 76 represent the mapping and display of a Content Input Form for Multi-Product Providers, whose offerings of 1 :M products and services are to be evaluated against user preference, and whose offerings may be returned to the user either as Most Relevant or Relevant, since no Of Interest designation is associated with Multi-Product Providers.
  • Intelligent Agent feedback triggers based on potentially relevant yet unchecked selections, as well as on the presence of contradictory or complimentary selections within a decision aid, across decision aids, o from a Persona-type baseline, amassed by selections of other users demonstrating similarity in demographics and user preference, in further detail, still referring to Fig.
  • step 80 tests if selected criteria are to be assessed within or across decision aids; 81, 82, 86 and 87 determines the appropriate cross-decision aid or cross-user analyses; 83 through 86 and 88 determine the appropriate intra-user and intra-decision aid analyses; in each instance, the extracted Intelligent Agent feedback is displayed in 89.
  • the method represented in. Fig. 30 provides occurrences of semantic intelligence reflective of the user's selection criteria and stated importance; such feedback is delivered to the user with the purpose of refining potential results and assisting in better decision-making.
  • Fig. 31 there is shown the -method for visually indicating thai a decision aid has been updated.
  • the label for a decision aid is visually distinguished whenever intelligent Agent feedback, social posting or ⁇ Commerce- activity has occurred since the user last viewed the decision aid— hether that a d is the users, or that of a family ' member; or friend.
  • 90 indicates the user action of opening a decision aid container— either View My Decision Aids or View Others' Decision Aids.
  • system processes and queries to determine which decision aids have received updates, and. to graphically highlight all in which the update test proves true.
  • Fig. 32 there is shown the method for connecting two potentially unknown users, based on system-identification similarity for a decision aid that both users have included within their member accounts.
  • 1 10, 120, 130 and 190 indicate an automated method for assignin integer values to user preferences within a decision aid
  • 140 .and 150 indicate a system method and query to compare the values of two aids and determine if conditions are met such thai the similarities are greater- than or equal-to an administrator-assigned threshold
  • 160 indicates that each of the two users will be given the opportunity to accept viewing the other's decision aid
  • 1 70. 180 represent a system query and method for cycling all decision aids through the comparison routine.
  • FIG. 33-a through 33-f example user interfaces are shown to convey a user's progress through major capabilities of . the system.
  • the renderings shown in Fig. 33-a and 33-f . are common across Single-Product and Multi-Product Domains; those shown in Fig. 33-b through 33-e represent an embodiment of the Single-Product Domain, highlighting potential user actions.
  • a user selects among a list of domains, as shown in 3301 , This walkthrough pursues a user- selected domain of "Explore Senior Living Facilities.”
  • the user is shown to have established. a user profile; as such, the user is later presented the option of saving the decision aid before exiting the "View Product Details" interface shown in Fig, 33 -c through Fig. 33-e.
  • the user has future access to the decision aid via the '"Manage M Galaxy" container, .shown in its closed state in 3303 of Fig. 33-a, and shown in its open state in 3316 of Fig. 33-f.
  • Fig, 33-b the interface for selecting criteria and level of importance for "Explore Senior Living Facilities' * is displayed to the. user.
  • filtering information such as location in 3.304, then selecting family members and friends with whom the user wishes to share the decision aid in 3305, the user reviews criteria contained beneath four Want categories and four Need categories, shown in 3306 and .3307.
  • the lour Wants categories arc Setting, Living Space, . Lifestyle and Well Being, while the four Needs categories are Care, Medical, Financial and Future.
  • each decision aid contains exactly four Wants and four Needs, the number of criteria within each category depends on the topic, and may number from few to dozens or more. Criteria are authored in the form Of attributes or goals, examples of which are shown below for "Explore Senior Living. Facilities";
  • the user may change the criteria default stale of "Not Important” to either "Less important” or “More important,” or may choose to leave the criteria as si Not important,"
  • the bullsey graphic shown- in 33-07 automatically updates to display, in aggregate, the level of importance for each Want and Need category; in addition, levels of importance drive relevancy of results returned to the user, as described in relation to Fig. 22 and elsewhere.
  • the user may view intelligent Agent feedback and results relevant to the selections by clicking 3308 "Vie Results,' ' f 00128] Now referring to Fig.
  • the user is presented with Intelligent Agent feedback in 3309.
  • Feedback is triggered by user-specified criteria, and includes observations regarding criteria chosen of similar-nature, criteria chosen of eontradictory-nature, and unchecked criteria that may be of value based on other user selections; additional feedback may include suggestions triggered by actions of similarly-minded users, as determined through the adaptive Persona Type method described with Fig. 7.
  • the user may click ⁇ 3 ⁇ 4 — Save" to store a piece of Intelligent Agent feedback within the member ' s profile, enabling quick access to the. feedback, as shown in items 3316 and 3317 of Fig. 33-f. Still referring, to the embodiment of the invention of Fig.
  • 331 1 shows results returned to the user, grouped within categories of "Most Relevant,” “Relevant,” and "Of interest.”
  • the user is shown a detailed description of the result in Fig, 33-d. item 3312.
  • the user may choose to print the detailed result or, as shown in 3313, either i) save the result to the member's profile, or ii) share the result with designated family members and friends via the Postings container, shown in Fig. 33 ⁇ e, item 3314.
  • the user may return to the main interface, which lists decision aids chosen and available to the user, by clicking the ⁇ Sho Galaxy' * co in 3315.

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Abstract

A system and method for problem solving in multiple domains on the web is provided. Two facets of preference are applied regardless of domain: first, criteria selected by the user which indicates which elements relate to the user, and second, level of importance to the user. For each decision aid that the user saves to his/her member account, a series of methods applied, thereto assist the user in making decisions through intelligent agent expertise, as well as through related eCommerce, social networking, guided content search and delivery of context-rich content. Relevancy of results, is also calculated. Depending on characteristics inherent in a particular domain, one of two primary methods is employed. The Multi-Product method uses ontology and a neural network engine to reveal the subset of relevant results based on any combination of user inputs, implicitly and explicitly derived. The Single-Product method maps inputs to results using sub-category analysis of fit and then applies user-centric filters and discounting rules to return meaningful coaching and relevancy of results.

Description

SYSTEM AND METHOD FOR MULTI-DOMAIN PROBLEM SOLVING ON THE WEB
CLAIM OF PRIORITY
|0O01 ] This application claims priority from. U.S. Provisional Patent Application Serial No. 61 /541 ,345, filed September 30, 201 1, currently pending.
FIELD OF THE INVENTION
(0002] The present invention relates generally to computer-based" decision systems and methods and, more particularly,, to a system and method for solving problems n multiple domains or subject matter areas on the web/internet,
10003] Web-based decision aids are intended for use in human problem-solving, speciiieally to assist end-users - including consumers, professional intermediaries, technicians and other professional personnel - in decision-making within subject matters selected by the user. An example of a decision aid is presented in U.S. Patent No. 7,761,345 to Marin et a.l.
(0004] Whereas a user's selections, likes and dislikes are typically captured from decision aids and stored at the account or profile, level in prior art systems, and are therefore used to define the user in whole, what is needed is a. system that captures and assesses preferences at the domain or subject matter level. Examples of domains include, but are not limited to,. Financial Assets, Senior Assisted Living Facilities,. etc,
|0OO5] In addition, what is needed is a system and method that uses decision aids as secondary, separate profiling mechanisms for the user, thereby facilitating representation of that user as related to a single subject matter at a time. This one-by-one delineation of user preferences to subject matter would enable, through methods, algorithms and meta tag technology, meaningful social connection, eCoramerce and content delivery, subject-by-subjeci versus en masse. Furthermore,, by capturing from the decision aids the combination of domain-specific user behavior (such, as selections, implicit clicks) and explicitly stated importance, user intent could be synthesized to reveal conclusions that, from a marketing perspective, surpass traditional approaches that draw statistics from disjointed user clicks.
[001)6] Furthermore,, a need exists for a system and method that synthesizes results of multiple users who, within a chosen -domain, have utilized the decision aid to reach, a resul t, so thai further intelligence may be formulated. More specifically, a need exists for a system and method where an intelligent agent utilizes cross-user observations to supplement coaching generated by irttra- user observations - both selection criteria and stated importance - so tha advances may be achieved beyond decision aids that rely solely on. explicitly-stated user preference to identity potential results.
[00071 Prior art decision systems and methods are typically based on -the hypothesis which states that use preference, a value explicitly notated by the user, results in better decision-making. A need exists, however, for a technical representation of a contrary hypothesis, whereb user preference is derived, by both implicit and explicit behavior, and whereby a user's clicks implicitly signal preference. Explicitly-denoted, stated importance, could then be applied to qualify the implicit choices, specifically devaluing them in cases where a user denotes that certain choices are less important than others. Stated importance could therefore be treated as a directive when finalizing a solution set of results for the user, but -could be applied secondarily, after an initial decision-pool has been assembled via implicit choice. A: need therefore exists for a system and method where application of user preference, combined with implicit and explicit behavior to establish user mindset, drives results,
[0008] Further, since an intelligent agent's responses are unique to user behavior/clicks and stated importance rather than being "canned" responses, the -user would receive meaningful feedback (such as education regarding potential benefits or risks associated with clicks) .no matter- what criteria is selected, or what importance-level the user prescribes. As a consequence, the user is more likely to experiment and explore. From a marketing perspective, encouraging this exploratory mindset cultivates cross-sell or up-sell opportunities that are traditionally difficult to initiate, SUMMARY OF EMBODIMENTS
[0009J A cross-domain decision aid for use on the web/Internet is described- According to one embodiment of the invention, subsets of criteria, each associated with one of eight topical categories, represent Selection Criteria that form the foundation for a. user's Overall Stated Importance for each category. While Overall Stated importance allows users to designate personal importance of each category by setting specific criteria to Not Important, Less Important or More important, it is the relationship between Selection Criteria and Overall Stated Importance thai is paramount.
[0010] 'Selection Criteria enables the user t fully consider attributes or goals (queries) within a category; Overall Stated Importance i calculated based on the user's level-of-importance designations for items within each category, chosen from a modified Likert scale where Not Important is the default selection, and where Less Important or More Important require the user to commit to persona! applicability (since no middle-of-the-road option is available, the user cannot "opt out" of commitment).
(0011] Both Selection Criteria and Overall Stated Importance drive the system's artificial intelligent agent.
[0012] The inteliigeni agent provides insight into the user's thought process through semantic processing, thereby teasing out inconsistencies as well as similarities within categories, across categories and across topics. Furthermore, by knowing what other users have done within a similar- domain, the intelligent agent can provide instant feedback to a user newly exploring a domain, for example:
[0013] 1. Members who have specified similar goals have also indicated a preference to look at , .."
|O0t4] 2. "You may want to explore [Topic N], based on others who have expressed interests similar to your interests." [0015] The intelligent agent educates users by citing relevant expertise in the forms of articles,, models and other media-rich conten Within a Blog or Tips Forum style of content deliver ', the .agent provides warnings, cautions and opportunities. This combination of education, directed, feedback and exposure to relevant results elevates the decision process, making it a highly interactive process, not a static event. By providing intelligent feedback via facts and observations that the user may not know otherwise, and by dynamically refining feedback with each user behavior, the system aids users in making not only different,, but smarter decisions.
[00.1.6] Within each subject area. Selection Criteria are divided into Wants and Needs, each containing four categories. Traversed by algorithms, this hierarchy enables the intelligent agent to tailor education based on user behavior, and to direct users to consider providers, products and services beyond those of a similar nature, such that inchoate Wants and Needs may be translated into results non-obvious or previously .unknown by the user, oftentimes enhancing or modifying, those results a user would, have otherwise foremost considered. From the outset, users may not know the result they Want or Need, or users may kno they Want or Need a category of result but may be unclear as to the nuances as well as breadth of the various options; additionally, users may be initially predisposed toward a type of result that, upon introspection and coaching, is exposed as adverse to their Wants and Needs. To this end, decisiomng within the system goes beyond effectuating a purchase or result that a user already knows that they want. Further, the system recognizes that both Wants and Needs drive behavior, and that oftentimes Needs eclipse Wants, as for instance when Needs pertain to medical requirements, or to financial or time constraints. To this extent, the system .contains logic such that Needs, trump Wants; specifically, an algorithm devalues potential results by assigning a higher weight to Needs than to Wants (note that an exception to this rule occurs when the Overall Stated Importance for a Need is less than for a Want). Coaching by the inteiiigent agent transcends decision-making into outcomes of self satisfaction, self fulfillment, self awareness or success; within such an environment, results go beyond tangible products and services, such that they may include pursuing an entirely different course of action.
{0017} The system's use of Selection Criteria plus Overall Stated Importance results in products services by one or a combination of two methods: given whether the chosen domain is Single-Product whereby user-seleeted criteria mirror attributes of each product provider such that the ratio of user-criteria to provider-attributes is 1 : 1 ;. or Multi-Product, whereby stated user goals are assessed/aggregated then mapped to all relevant .products, whereby the ratio of user- criteria to products is M:N.
|0O18] Within the Single-Product method, each returned provider varies in degree-of-fit of the same conceptual product (for instance, a Daycare facility, -a -Senio Living Facility, a University). Via percentage-based calculations, Single-Product providers are designated as Most Relevant, Relevant and Of Interest. Within the Multi-Product Method, returned providers, vary in degree- of-fit of potentially many products (for instance, Financial Investment. Alternatives, Preventive Health Measures, End-of-life Considerations).
10019] In the Single-Product method, a provider is not penalized for providing more products and services than a user's specified Wants- and Needs; rather, a provider is penalized only for providing less products and services; as such, in the extreme case, a user who selects zero criteria, whereby no Wants and Needs are specified, will be returned all providers as Most Relevant; however, as the user selects more criteria, more providers are disqualified as Most Relevant and Relevant providers. This inverse relationship can be represented as follows:
[0020] An increase In value of C {vvhere C represents the number/specificity of a user' s Wants ami Needs) from 0 to m, results in a decrease in P (where P represents die number of pro viders deemed Most Relevant and Relevant) from n to 0.
('0021 ] In the Single-Product method, an Overall Stated Importance of More important calculated for a Need category acts to devalue an provider whose corresponding attributes have a -less-than favorable match (determined via a. percentage-based calculation) regardless of isolated criteria producing a favorable match, or entire Want categories producing an overall highly favorable match. In such cases. Needs trump Wants, and a provider original iy deemed Most Relevant is devalued to Relevant; a provider originally deemed Relevant is devalued to Less Relevant.
10022) Within the system, the results container for the Multi-Product method does not point to a list of singular providers; rather, it evaluates every day Wants and Needs then translates those into potential products and services. Rather than present a pre-defined, static set of results for a single provider, then, apply user preference to narrow the choice, the system purposefully separaies providers' products and services from the user's field of choices, such that user selected criteria are evaluated to return results relevant to the user's Selection Criteria and Overall Stated importance. In this manner, the system harnesses technology to reduce the field of results to those with the highest degree of user-relevancy prior to presenting the set to the user, such that a decision is made from a customized solution set, containing only elements that have been pre-quaiifkd as being applicable to the user's Wants and Needs. Only after the user chooses a product or service to review does a list of qualified providers appear, each containing -a web Internet link/URL leading to provider-specific products or services.
BRIEF DESCRIPTION OF THE DRAWINGS
[0023] Fig, 1 illustrates an. embodiment of the system of the invention where users connect through deskto computers, laptops, tablets and mobile devices to web servers, thereby gaining access to Ul, algorithms and databases of the system and, through the system, to third party server and. content;
[0024] Fig. 2 through Fig, 6 are examples of User inter ace renderings in an embodiment -of the invention; Fig. 513 also shows .an embodiment of logic used to manifest content display:
[0025] Fig. 7 listsseif eam g behaviors intrinsic to an embodiment of the present invention., and that enable the system to filter results based on user demonstrated behaviors, as well as Persona-type behaviors, which act as baselines from which to compare users and determine relevancy;
£0026] Fig. 8 displays a graphic and a table; the graphic represents a visual cue, presented for end-user benefit, that summarizes user-stated level, of importance; the table represents test cases for calculating Overall Stated importance values;
[0027] Fig. 9 illustrates mapping within the Muiti -Product method, structured as a semantic network; f002S] Figs. 10 through 12 display instances of ontologieal relationships contained within the Multi-Product Method;
[0029] Figs. 13 through 17 display flow diagrams, use cases -and instances of conditional feedback tied to an embodiment of the present invention
[0030] Fig. 18 is an illustration of a mathematical, integer-based algorithm that can be used to represent user .choices in a manner, by which choices can be electronical iy compared to those of other users, and for the end-purpose of connecting users otherwise unknown to one another;
[0031] Fig. 19 through 22 are examples- of logic, tests & conditions which assess user input and drive intelligent feedback and display of results within an embodiment of the current invention;
[0032] Fig. 23 is a flow chart depicting of the use action of accessing anew (adding) or updating a decision aid, which upon save, is displayed and stored within their member view of ihe website;
[0033] Fig. 24 is a flow chart depicting, the user action of accessing a saved decision aid. with the purpose of i) viewing displayed results' and ii) being presented with options of connecting with other users based on the user's specified Social Share criteria, and with similarity to -other users as evaluated via the Social Connect method;
[O034| Fig. 25 is -a flow chart illustrating providers associated with user Stated Importance and Selection Criteria,, based on execution of either the Single-Product method or the Multi-Product method;
[0035] Fig, 26 is a flow chart illustrating method, for displaying a social blog, expertise or agent feedback, based on user request and the format of the associated content:
[0036] Fig. .27 is a flow chart showing adding, displaying and -editing user profile information, which is used to permit saving of decision aids and connecting with other users; [0-037] Pig. 28 is a flow chart illustrating a method for determining the visual display elements appropriate to disclose to other users, based on the originating user's specified Social Share criteria;
[0Θ38] Fig. 29 is a flow chart illustrating a structured process for creating proprietary Content Input Forms which are tied to decision, aids by subject matter and which capture products and services from either Single-Product or Multi-Product Pro viders;
[0039'j Fig, 30 i a flow chart showing a method for displaying, via intelligent agent recommendations, content of higher-order relevancy from a proprietary database, which is based on criteria either within a. user-specified decision aid, across user decision aids, or across users who have demonstrated similarity in preferences;
[0040] Fig. 31 is a -flow chart showing a method for determining -the visual display of icons for the decision aids, based on updates to the decision aid by users, by providers or by the intelligent agent;
[0041] Fig. 32 is a flow chart illustrating a method for determining compatibility or percentage similarity of users' decision aids:
[0042] Figs. 33.a-3.3f present an example walkthrough of user interfaces in an -embodiment of the present invention that are common across Single-Product and Multi-Product Domains, and where Fig. 33-b, 33-c, 33-d and 33-e provide an embodiment of the Single-Product Domain, specifically i) selecting criteria and level of importance, ii) viewing Intelligent Agent feedback, iii) accessing social postings, and iv) reviewing relevant results,
DETAILED DESCRIPTION OF EMBODIMENTS
[0043] A web-based decision aid, for use across domains to assist in human problem solving, is described. The drawing contained herein - including process flows, renderings of user interfaces, use cases, mathematical models and formulas - are displayed to convey system aspects versus system l imitations. Advantages of embodiments of the present invention include, without limitation, assisting the user in making decisions through intelligent agent expertise, as well as through related eComrnerce, social networking, guided content search and delivery of context-rich content, Furthermore, whereas web profiles typically define members in their entirety, such that preferences are tied to a profile as a whole, embodiments of the present invention delineates a member's preferences based on specific subject matter areas, assessing those preferences by implicit and explicit user behaviors. Within embodiments of the present invention, any decisio aid can be easily added, deleted or updated, without disrupting or altering social interactions, eCommeree and search capabilities related to a member's other decision aids.
[0044] Fig. 1 illustrates an embodiment of the system of the invention. Users, via browser- enabled controls available on remote access devices such as smart phones, tablets and personal computers (1101 through 1 103), connect -to one or more web servers (1109) containing an embodiment of the invention's algorithms, data schemes and databases, through load balancing and clustering technology shown in 1104 and user and provider portal cluster or internet 110:5, Also referring to the embodiment of the invention of Fig, 1, 1106 and 1 107 represent access to the system's Content Management System 1 108, enabling creation of proprietary content, as well as management of links to third-party products, services and content deemed relevant to the user, as determined by ontoJogical subsets and percentage-similarity calculations described, in Figs. 9- 12 and Figs. 19-22, discussed below.
User I terfaces & Results Display
|'0045j Referring to Figs. 2 A through 4B, there are shown wireframes and renderings representing screens in an embodiment of the present invention's user interface. Here, the graphical displays are shown to convey primary interfaces - namely Add/Update Profile & Domains, Choose Wants & Needs and View Results - not .as limitations of the user web- experience, which includes overlay windows, mouse-over tool tips and browser windows,
| 04 | In further detail, within the homepage screen of Fig, 2A, a wireframe for Add/Update- Pro file & Domains is displayed, where 1201 permits user -access to previously saved decision aids ~ those for which Wants and Needs have been chosen by the use -earlier, either during the current session or a prior session. 1.00471 Within the container 1201 , as with other containers within the system, are reveal/hide controls, a scroll bar to access content beyond that displayed within the boundaries of the container, and active-click labels used to launch content.
10048] Now, still referring to the screen of Fig, 2A, the container represented by .1202 indicates a container through which a user may choose from decision aids to add. to their member account; specifically, the container lists al l possible decision aids, grouped by topical neighborhood , The container represented by 1203 permits user access to Other's Decisio Aids; this container lists all decision aids created by other members who have granted the user permission to review and comment on their decision aids. 1204 indicates a Sign-in / Sign-out capability, whereas 1205 indicates a container for adding or updating a user profile, for which- example mandatory fields include Unique User Name and Password, Verified email Address and User Birth Year. The My Connections container represented by 1206 permits users to establish a master list of family members and friends, from which the user later grants review & comment permissions for decision aids, determined by the user on a ease-by-case basis versus en masse. Within an embodiment of the present invention, still referrin to 1206, My Connections are initially established by specifying an email address contained within a member database; in cases where an email address oasts, a connectio confirmation message is displayed, along with associated User Name. The list of all those members within a user's My Connections list is displayed on the user-specific view of the homepage. 1207 indicates Help, About and Terms & Conditions links, in Fig. 2 A, inset 1208 is a graphical rendering of the wireframe after a user has created an- account and added decision aids. An -enlarged view of graphical rendering is- provided as Fig. 2B.
1.0049] Once the user has -selected a domain (and created an account .and entered profile information), the screen of Fig, 3 is displayed. The screen of Fig. 3 is used by the user to create a decision aid. Fig. 3 illustrates a graphical rendering of Choose Wants & Needs, where 13-01 enables a user to name the decision aid, and where 1302 represents a container for capturing high-level filter information. Here, user-demographics are used to narrow resultant datasets that are retrieved from the web/Internet. Beyond cross-domain filters such as birth year, the value of which is captured at the profile level, certain filters are domain-specific, or arc relevant i multiple but not all domains. Location, for example, is necessar within a Financial Assets domain to parse-out banks thai do not operate in certain U.S. states, This filter isolates location- relevant providers from the universe of all providers identified as potentially relevant, thereby preventing the display of non-meaningful banks. Location is also applicable to domains returning relevant facilities (for example, Senior Living, Golf Courses); in such cases. Location narrows the universe of providers to a subset satisfying a true condition of user-chosen geo- centricity. In one embodiment of the present invention, third-party tools are used to streamline and/or expand the Location example. As for streamlining, the user interface allows users to enter city/state versus zip code; here, third-party apps are leveraged to convert, city/state to zip code. As for expanding Location, the user interface allows users to enter a search radius from the specified city/state or zip code. Again, third-party apps determine all zip codes within the specified radius; that series of zip codes is then used to retrieve the subset of relevant providers.
(0050) In further detail, still referring to 1302, results for the decision aid are filtered through an Exception Rule Base; the same Exception Rule Base i applied to Single-Product Domains and to Multi-Product Domains, For example, birth year is relevant for domains such as Senior Living and Healthcare, among others. Consider the. ease where an intended Senior Living Facility search is for an aged senior, 85 years or older. If the user selects a Want (hat could return a result more suitable for a younger, more active senior, then results are tempered to reflect the birth year filter. Specifically, a facility tagged as an Active Adult Community, and that without the ilter would otherwise be displayed as Most Relevant, is discounted to Relevant; a facility otherwise displayed as Relevant is discounted to Of interest.. An embodiment of this Exception Rule for discounting results can be understood as follows: for any product calculated as Most Relevant and that contains potential exception content, assess a rule base [Ri -.R^l for limits to the exception content. For example, if Rule K states ''Active Adult Community" < <;8 Years" for birth year, and if the exception test fails, then discount the product from Most Relevant to Relevant, or from Relevant to Of Interest. The discounting algorithm is not applied if the product is originally returned as Of Interest, since no tier exists beneath Of Interest. [0051 J Now, still referring to the. screen shown in Fig. 3, 1303 indicates a container from which the user grants review & comment permission to family members and friends, specifically for this decision aid, regardless of permissions granted for other decision aids. To invite a family member or friend to review and -comment on user-chosen goals and suggested results, a user follows a two-step process, where establishing and managin My Connections, described in Fig. 2A, item 1206, are. treated separately from inviting others to view specific decision aids. Specifically, having a member within My Connections does not in. and of itself permit the viewing of any domain/decision aid; rather, as a user adds or edits each decision aid, they have the abiiity to select, from a drop down list, which family member and friends— if any— they'd like to review and comment on that, particular decision aid. This process is repeated for each decision aid, thereby allowing disparate groups to review and comment on different decisions. In this manner, a user may choose to keep a particular decision aid private, thereby preventing anybody listed in My Connections. from reviewing it. The same user may choose one-or- wo persons from My Connections to review another decision aid, and choose many to review a third. Furthermore, a user may choose to delete (remove) someone from viewing a decision aid for. which they had previously extended an invitation, without permanently deleting thai person from My Connections,
( 0S2J Still referring to the screen of Fig. 3, 1.304 indicates a container enabling the user to select criteria of interest or self-relevance. The system then asks the user to qualify that selection as Less Important or More Important using a three-position control, as described via instructions indicated by 1305. Regardless of domain- type, the default value of the three-position control for Stated Importance is Not Important; a single click assigns the criteria a value of Less Important and a second click assigns the criteria a value -of More Important. For Single-Product Domains, Stated Importance values are used when determining which, providers are Most Relevant, Relevant or Of interest, and are used to value or devalue results. For M u I ti- Product Domains,
Stated Importance values of Less Important and .More Important are treated equally -namely as a Hag that the criteria/goal has been selected b the user. Specifically, as explained in greater detail below, for Multi-Product Domains, Stated Importance values are used for Intelligent Agent feedback and as reminders/cues to the user, versus weighing results providers. Again, as explained in greater detail below, within this embodiment of the present invention, Multi-Product Domains results are weighed based on recurrent instances of products satisfyin user-specified goals.
[0053 | To achieve result relevancy, the system addresses common challenges of survey validity, including (i) low incentive to complete, (ii) perceived risk, of responding truthfully, (Hi) ego inflation, (iv) misinterpretation of queries, (y) Jack of qualifying feedback during the survey, and (vi) mid-point non-committal response to requested Level of Importance. Within the current embodiment, selected criteria confront these challenges directly, thereby dramatically improving reliability of user responses, and therefore of result relevancy. Specifically:
[1)054] (i) Low incentive to complete. Users quickly recognize that the system's user-centric results are a function of user input: the more fully a user responds to the goal statements/queries, the more -meaningful are the supplied responses.
(0055] (ii) Perceived risk of responding truthfully. Tied to item (i), users recognize that untruthful responses to goal statements queries lead to results ill-suited to their wants & needs; only truthful response leads to applicable results. Within the system, there is disincentive to respond in any way but truthfully*
[0056] (iii) Ego inflation. The converse of item (ii). The system provides disincentive for ego inflation-, as the result of such' behavior is the return of ill-suited results.
| 57] (iv) Misinterpretation of queries. The system's Intelligent Agent observes user responses then provides Blog- style, feedback regarding similar, dissimilar and potentially overlooked queries. Feedback is immediate and tailored to user action, thereby reducing the occurrence of query misinterpretation.
[0058] (v) Lack of feedback during the survey. .Addressed in item (iv). |0059) (vi) Mid-point, non-committal response to requested Level of Imparlance. The system's modified Liken scale, which is a three-state control of Not Important, Less Important and More Important, eliminates "middle-of-the-road" responses. Each query delivers binary certainly, with the first test being either Not Important ( .i) or Important* and the second tes— applicable' to those queries deemed Important— as a. user commitment between Less Important (Li) or More Important (Mi). These conditions isolate user intention with greater certainty than do surveys allowing mid-point responses, since there is no "somewhat important from which to choose. In each case, user responses will always satisfy one of two Boolean conditions: if -~>Ni then (Li v Mi) or If -.(Li v Mi) then Ni
[0060] Finally, the. screen of Fig. 3. at 1306 contains further instructions for saving user choices, then viewing intelligent Agent feedback and recommended results.
[0061] Figs. 4A and 4B shows a graphical rendering of View Results, where 1401 enables a user to toggle between Blog containing Intelligent Agent feedback, and social postings from family members and friends; however, if in Fig. 3, item 1303 the user chose to designate the decision aid as private, the social postings tab in 1401 is void of postings—ts. sole contents are instructions- for granting review and comment permissions, via item 1303. In instances where a user (UN) is deleted from reviewing any/all decision aid(s) of another user (UM) at the same time that UN happens to be reviewing that U decision aid, state-control within the system allows l½ to complete commentin— and for those comments to be displayed; however, once L¾ exits the decision aid, he/she will be unable to access it again until re-invited by UM— or in the case of having been deleted from. My Connections, until re-established within My Connections by U -
[00621 Still referring to 1401, the Intelligent Agent's Blog contains no Relevancy headers, such as those used to display product results. -Specifically, no mathematical calculation is used to sequence the display of Intelligent Agent feedback; rather, the display bears a 1 : 1 relationship to the sequencing of user-state'd goals, which is static within an embodiment of the present invention, and is determined by content authors when goals are authored. In cases wher two goals produce the same Intelligent Agent feedback, only .the- higher occurrenc is displayed (this prevents a specific statement from being redundantly displayed in the same container, at the same time).
|0063] Still referring to the scree of Figs. 4A and 4B, 1402 displays criteria that the user selected, as described in Fig. 3, item 1304. Only chosen criteria are displayed, not their associated level of importance. The containers within 1 03 and 1404 (Fig. 4.4} indicate results of Multi-Product Domains,, whereas the containers within 1405 and 1406 (Fig. 4B) indicate results of Single-Product Domains, Specifically. 1404 displays whenever a user clicks on a product label within 1403; and 1.406 displays whenever a user clicks on a provider label within 1405. In this manner, intelligent Agent feedback and detailed result descriptions are extracted based on user action.
Indicators of Re evancy
[0064] Within the bottom of 1404 is shown a text container, indicating the output of the system's Internet/web Search String Generator. This generator produces ontological representations for ail products that the system's Intelligent Agent recommends. When more than one goal triggers relevancy of a single product, the system displays a separate search string (via a drop down box) such that each search .string contains the product name, plus the ontological representation of that goal The search string, which, is generated automatically by utilizing the system's ontological schema, may be overridden via a content author's manual edits,
[0 65J If, for example, a relevant product is 529 Plan (Product: P), and if 529 Plan has only one user-selected goal which triggered its placement within the relevant products subset, then a single search string is displayed, its contents dependent on the ontological representation of the user-selected goal not of the product-— for which an instance may be:
529 Plai Savings Iristrument+Suppott-i-Reeipicnt- Mmor, where
Product « 529 Plan,
Class = Savings Instruments,
Intention ;;; Support, Attribute = Recipient, and
Sub-attri ute: ^: Minor
[0066] However, if Product Pys placement within the results subset was triggered by multiple user-selected goals, then multiple search strings are displayed, their content dependent on the onto!ogical representation of those user-selected goals,
[0067] The relevant products container shown within context of the user interface hi Fig, 4A, item 1403 is enlarged in Fig, 5 A, item 1501 . Within 1501 , products are grouped by class-type (or product family) then displayed within their product family (as shown in 1502) beneath Most Relevant or Relevant labels. In this manner, products can be bundled in a way that is meaningful to users. Specifically, product families, which are synonymous with the ordinate Class within the system, are used to count the occurrence of like products. In this manner, a relevant products (RP) subset containing three products (Pj, *, P; thai are all ontologically codified as Class M (C ), will give ¾ a count of 3: within the same relevant products subset, two products (¾, Pj) ontologically codified as Class N (CN). will give C a count of 2. When displayed in the results container. CM along with product family members Pj, Pj and P will precede CN and its product family members P4 and P5. Within the system, product family occurrences translate into degree of relevancy for each product family. When, applied to the interface rendering within Fig. 5 A, these class and product designations become;
C)4=R tir tnent Funds & Plans
Figure imgf000017_0001
P2HRoth 401(k).
P3 not shown, see note below
C^-Savings fmtr ni n (s
?f*529 Plan
? )verieU ESA
[0068J For certain embodiments of the user interface, real estate limitations may restrict the display of products per family, resulting in the need for a user control such as the arrow next to Roih 401(h) in 1502—such user controls indicate to the user that additional products, in this case P3,: are also placed in the results basket for the product family called Retirement Funds ά H ms. in further explanation, still considering the relevant product subset containing the following five products:
40 IK
Roth IRA
Social Securit
Spousal I A
SIMPLE I A
( 006. j The product family common to these products is Retirement Funds ά P . For this example, additional products within the example, relevant products subset are:
Fixed Annuity
Variable Annuity
|0070] for which the product family is Annuities. The esults engine continues to count products within their product families, then displays produei familie in descending order of occurrence. Within the system, administratively-set thresholds may be used to further designate whether a product family is displayed beneath the Most Relevant or Relevant label. For instance, within Multi- roduct Domains, an embodiment of the present invention sets the number of Most Relevant families at a default value of five (5) families. In instances where no more than 5 families are relevant, then no Relevant label is displayed. Further, only Most Relevant and Relevant categories are meaningful in Multi-Product Domains since mathematically, results cannot be returned without some degree of relevancy to the user; therefore, all products outside Most Relevant fall into the Relevant basket, grouped by family in descending order of goal-to- product count. Eliminating Of interest applies to the Market Links tab of Single-Product Domains as well, since the Market Links container utilizes the system's Multi-Product method to calculate and display results. Referring still to Fig. SB, a table is shown indicating relevancy display for Multi-Product Domains; here, a depiction of products, product families: and placement within relevancy baskets is presented, where:
[0071 J 1. Relevant Products (RP.) Is the subset of products; identified by intersecting the Potential Relevant Products set (PRP) with user-state goals [00721 2. TRUE, refers to the number times a particular product is identified via the PRP and user-stated goals intersection
|1073] 3. Count is ALWAYS shown as 1. since # TRUE per product does not factor into relevancy placement (all that matters is that the product has been identified for display)
J0O?4} Given the example threshold of 5 families per Most Relevant categorization, all but. F& are displayed as Most Relevant. Since each of Fu. Fn and F¾ contain a single product within the relevant product subset, there is n mathematical rationale as to why F$ (rather than
Figure imgf000019_0001
Fn) fail into, the Relevant, basket, other than it is the last family identified during processing. Likewise, there is no mathematical rationale as to wh 4 displays before F¾ within the Most
Relevant basket, other than family F4 was identified during processing prior to family P however, the presence of Persona-type triggers based on self-learning, algorithms, may promote F j over F4. Finally, still referring to the table shown hi Fig, 5B. if relevancy were calculated according to # TRUE per product, sequencing of products would be: P) 2i with 3 occurrences, followed by P24 with 2 occurrences, followed by all other products, with 1 occurrence each. However, despite P2 enjoying 2 occurrences, it is listed lower than seven products with single occurrences- products that benefit from being in. families containing more RP products than FJJ
(the family fo P2 ),
[00751 Now referring to the Multi-Product display shown in Fig. 6, an intelligent Agent feedback tied directly to products (displayed in an embodiment of the present invention beneath the "Why did you list this for me?" label at 1404 of Fig, 4A), is displayed along with the product and therefore is tied to the relevant products (RP) subset intersection, with user-stated goals, which dictates relevancy display for products. If a single instance of Intelligent Agent feedback is used for multiple products, then it is displayed for each, of those products; within the system, this repeated display is not considered redundant, since it can never appear visually in the user interface at the exact same time, in further detail, still referring to Fig. 6, content beneath ''Wh did you list this for me?" is generated automatically by a token-based (variable) bash routine, or represents Intelligent Agent feedback written by content authors, in each ease. content extracted based on combinations of user-selected criteri being true. The presence of authored qualifiers overrides display of any automatically-generated qualifiers, since authored qualifiers contain more robust feedback than machine-generated content.
Adaptive & Non-adaptive Methods
[0076] Within the current embodiment of the. invention, each self-learning method becomes an additional Internet/net search results filter. As such, the results routines allow for filters to be added, removed or modified without changes to untouched -filters* Adaptive algorithms within he system are based on action and inaction of each user, as well a representative behavior (Persona-type X) for each user. The outcomes of these algorithms are refined Intelligent Agent suggestions (that is, a reduced set of statements, products & .services deemed relevant to the user). Algorithmic categories applied to the system's Intelligent Agent include those shown in Fig. 7, such as the agent's ability to learn to (i) ignore, (ii) append, (iii) befriend, (by.) suggest, (y) refine and (vi) be current,
[0077] Adaptive & non-adaptive methods are applied to the system's neural network engine. Non-adaptive methods drive the neural network engine's co nectionistic behaviors-— that is, the mapping of inputs to relevant results. The adaptive methods focus on Persona-types assigned to like-users, and are implemented via a threshold-assigned similarity in profile attributes and stated Wants and Needs. Each. Persona-type then filters the displayed results, thereby refining results to reflect behaviors captured within the Persona-type. Finally, an embodiment of the present, invention enables business-rules to dictate when the neural network engine performs self- adjustments, whereby for any filter Fj the input and/or output nodes of the neural network, assimilate the properties defined by Fj , This progression of i) non-adaptive, to ii) adaptive via filters,, to iii} fully self-adjusting, enables business-driven thresholds and rules to dictate modification to the neural network, rather than granting it organic behavior. Semi-automatic updates allo tmnsformation of the network, without encountering ill consequences inherent in. automatic updates being contemplated for Ai systems. {0078] The system's filtering method inherently accounts for both high- and Sow- requency, enabling the filtering-out or demotion of low-frequency concepts, and the promotion of high- frequency concepts. For each Concept , filtering is a function of the frequency of CN (∑ of CM clicks enacted by a Persona-type) as compared with frequency of each related concept within the ^ci- Cj¾;.. Filtering within the system also occurs at the Product Family level, where Product Family is synonymous with the construct Class, allowing removal, demotion or promotion of a Product Family results based on frequency of Persona- type access. Multi-Product Domain results, beyond being based on an oi tological match to user queries, are affected by any Persona- type discounting/promoting methods.
Use of Persona- types
{0079] Within the system, Persona-types form automatically through implicit user-behavior and explicit user-response. Implicit cues include i) selection of criteria under Wants & Needs, and ii) clicks on Intelligent Agent feedback. Links and products. Explicit cues take the form of "'interest/satisfaction'' checkboxes labeled -Save and— Share.
{0080] The system's Save checkbox is located next to. each, intelligent Agent feedback and resulting product. Whenever a user checks · Save, a link to that content appears in the— Save container,, facilitating future retrieval, review & action by the user. The— Save container is available via the home page {Figs. 2 and 33-f), displaying links to all content that a user has flagged for future review regardless of whether the user has modified Wants and Need and possibly removed the content from coaching and results containers for a specific domain,
{00811 The present system's Share checkbox is located next to each product. Whenever a user checks -Share, link to tha content appears in the user's ''Postings" blog, with an automatic statement asking family & friends to review the product and provide comments. Family & friends can click the link within the blog to -review the product, which may no longer appear in the results container if the user has modified Wants & Needs. When family & friends click the link, data analytics regarding usage/review/access are updated. |0082j With the system's Save and—Share capabilities, user interest saiislaeiion is gauged without interruption of "How satisfied ar you with this page/product?" or "Is this a page/product you would share with a friend?"— queries that are commonly used to solicit explicit feedback, at the risk of annoying and losing the' user; rather, the system's—Save and Share are tools provided for the user's benefit, facilitating review & sharing of content. A by-product of the tools i input for Persona-types, therefore triggering updates to the neural network engine and to data analytics. Beyond capturing, the. user's interest in flagged products, -Share captures frequency of access by family & friends, which is valuable marketing data for product providers.
[.00831 A second use of the system's Persona- type involves development and measurement against pre-established baselines, used to validate marketing or other external assumptions. In such uses. Persona-type P i established as the expected norm and held constant: P is then compared with a sample of users within a specified user-profile, enabling sample standard deviation (σ) analysis from baseline expectations, For a sample set Hi, LVj, comparing the actual standard deviation value of Ui and UM to cr, which the sample baseline would necessarily value at <? = Ui - ?μ ~ l¾ - ' μ becomes a valuable tool to validating or challenging previously held beliefs.
[0084] The graphic shown in Fig. 8 summarizes, per Want category and Need category, user- stated level of importance. An algorithm applied to underlying criteri is used to generate a visual cue indicating whether the user weighed the category higher or lower in overall importance; effectively, the three-positio control, for user-stated level of importance results in a visual reminder to users and their invited friends & family, as to what's important to the user. Still within Pig. 8, a table displays test cases for the algorithm, an embodiment of which appears in Pig. 19.
(0085) Fig. 9 visualizes output of the Multi-Product Domain method, wherein a neural network utilizes a proprietary Is-a" based ontology that, although exact in structure across subject areas, contains unique identifiers for each domain, thereby enabling th mapping of user selected criteria (1901 and 1902) chosen from eight categories of Wants and Needs, to related products and services (1903, 1904 and 1905). The engine is required to effectively map the superset of Wants & Needs (alternately referred to as selection criteria, goals or queries) to the superse of products, producing a Potential Relevant Products (P P) subset— in effect, the neural network engine mathematically isolates all selection criteria that share an ontologieal relationship with any given product, then uses those matches to display relevant products along with Intelligent Agent feedback. Still referring to Fig. 9, an example universe of 24 criteria (boxes shown, on the diagram's left-side), and of 49 Products (bubbles forming the half-oval on the diagram's right- side), yields a possibility of 2i4*2 9=:2' > or 9,444733e-r2I unique matches. While only a subset of that number may represent meaningful real-world, matches, each combination must, be evaluated to determine if it is relevant or not— a task well beyond human capability to tackle, considering that the possible matches are effectively countless. Furthermore, thi illustrative universe is small compared to real-world numbers that may comprise hundreds of criteria per domain (as opposed to 24), and hundreds of products per domain (as opposed to 49).
Neural Network Engine Output.
[0086] Now referring to the table shown in Fig. 10, the system's neural network engine functions offline. Although its output is necessary to generate relevant results for users, the engine itself doe not run during a user session. The file produced by the neural network engine, which is then accessed runtime to determine user results, is an MxN matrix of Potential Relevant Products (PRP), where M represents the total number of products within the universe u, and N is .the total number of criteria (or goals) within the universe- ί¾, such that each column corresponds to a goal. Specifically, the value in cell PjGs is true when the Nxl matri for Pi multiplied by the Nxl matrix for Gs equals the Nx l matrix for G5. One embodiment of this method is a linear algebra equation revealing the result of true if F s ] "* [G5]— ( O5] ; stated broadly, result. R of multiplying two binary matrices P and Q equals matrix P only when matrix P is a true subset of matrix Q. Applied to multiple goals and products, this can be further represented as;
Potential Relevant Products (PRP) = Subset of Products (PK,.PM),
Where for Products Ρ·..Ρζ and for Goal CI ..GN>
Binary relationship of the ontology of each Product (P), multiplied by Binary relationship of the ontology for each Goal (G), exactly equals
Binary relationship of the ontology of that Goal (G)
[0087] Effectively. PRP is an extraction of products that are ontologjcally aligned with goals; this extraction method is used within Multi-Product Domains t produce the PRP, and within Single-Product Domains to identify Potential Market Links (PML). The first row within Fig 10 indicates PRP skef execution timing and purpose. Beyond being the set from which relevant products are calculated for each user, the MxN matrix, of Potential Relevant Products is utilized by content authors to write Intelligent Agent feedback based on Goal-to-Product relationships defined within the MxN matrix. Still referring to Fig. 10, the PRP solution set is produced using the same method that calculates the Potential Market Links (PML) solution set; the PML is required by Single-Product Domains to determine which goals map to which Market Links (consumer retail products). The third row within Fig, 10 indicates PML size, execution timing and purpose. Now, still referring to the table for Fig. 10, Relevant Products (RP) is a subset of the PRP solution set, and is calculated runtime based on the intersection of goals selected b a user, and those products within the PRP thai are associated with user-selected goals. RP i produced using the same method that calculates the Relevant Market Links (RML) subset within Single-Product Domains, used to determine which Market Links within the PML solution set are associated with user-selected goals. fO SSJ Finally, Relevant Results (RR), not shown in Figure 10. is solution set calculated for Single-Product Domains. The RR set i produced by a series of percentage-based calculation that, are then devalued based on user-stated tevei-of-imporiance for the criteria they select.
[008.9] The inference algorithm that drives neural network engine mapping, is used solely to ma goals to products; however, separate methods are used to execute intra-mapping of products and goals. For Product-to-Product mapping- (P2P), a binary matrix (I xN) multiplier method fails to produce real- world results: while this method can produce a subset of results mathematically, its outcome inadequately reflects relationships produced through human cognition. To isolate P2P similarities, the system uses a derivative method of the one that generates Single-Product results. Rather than return subsets, this method calculates "percentage fit." This P2P capability becomes an important machine self-learning opportunity: enacting this method allows the Intelligen Agent to comment on related products, and to return "near products" that Goal-io-Produci mapping does not return. Beyond the machine self-learning benefit, this method reduces the need for content authors to create additional (though minimally dissimilar) goals to point to products not currently returned via the MxN matrix. Using this method, the system's Intelligent Agent is essentially saying, "The similarity of this product, is so strong to another product I've suggested, that Ϊ am including it with your results '
[0090] Goal-to-Goai mapping (G20) within the current embodiment, of the invention, utilizes a method supplemented by human assistance; for any goal chosen b a content author within the system's Content Management System, all other goals that contain, the same class but different subclasses are displayed to the author. This displa is an indication to content authors that goals may be contradictory, or that intelligent Agent feedback, should be written to clarify (dis)similarity of the goals.
[0091] No logic beyond that used to produce the Relevant. Products (RP) subset shown in Fig, 1 Q will remove products from the PRP set, However, user-specified filters and Persona-type filters may reduce the results subset by removing content deemed irrelevant, either by the user or 'by machine-learning algorithms. Furthermore, Intelligent Agent feedback identifying contradictory goals, produced automatically or written by content authors within the Content Management System, encourage, the user to deselect goals, which in turn may have the effect of removing contradictory products. This approach places decision-makin with the user. Rather than allow the inference engine to remove products of a contradictory nature (an action that, without further contextual input from the user, may produce erroneous results), the intelligent Agent prompts the user to conduct "housekeeping'' on selected goals, thereby further removing products returned to the user. |0O92J Dissimilar to employing ontological triples, which leverage noun-pvedieate-ohjeci schemas to extract natural language context from various inputs, the system's ontological schema is structured specifically to facilitate the conceptualization of decisioning, with the ontology's two primary constructs being Classes (with Super Class, Class & Sub-class subsumption) and Attributes (with Attribute and Sub-attribute subswnption); these constructs are "hinged" by intention, which forms the core of human decisioning. Such a schema provides less cognitive challenges for content authors utilizing the ontology, thereby reducing authoring errors that are common with complex ontologies, yet providin the power .of linking concepts (for instance, goals to products) across specified domains. Within this structure, goals are equivalent to queries, while products become targeted objects of those queries. Within the system, the ontological structure for products mirrors the ontological structure for criteria, or goals; however, they differ regarding the minimum and maximum number of identifiers used to classify each. Specifically, the restriction placed .on goals mathematically forces goals to be a potential subset of products, such that for the universe of goals f Gi.;) and products (Pu). instances of goals (GK) exist which are subsets of products (¾), so that G ci PK. Given requirements for Minimum &. Maximum Identifiers -shown in Fig. 1 1., a goal will always have I intention and 1 Attribute, but may have 0 of the remaining identifiers; a product will always have at least 1 of every type of identifier. Regarding subordinate relationships: i) Super Class is sub-ordinate to nothing
ii) Class is sub-ordinate to Super Class
iit) Subclass is sub-ordinate to Class
iv) Intention is sub-ordinate to nothing
v) Attribute is sub-ordinate to. nothing
vti Sub-attribute is sub-ordinate to Attribute [0093] This schema generates output meaningful io humans by enabling machines, via subset calculation, to link richly-defined products to singly-defined goals. Within the system, methods by which subsets are extracted include linear algebra methods, such as multiplication of binary matrices. When authored, goals need to be purposefully exact— ersus being compound or linguistically complex. It is within the combination of .singly-defined goals that complexity lies, but combination of concepts is handled by the machine, not the user, therefore reducing human cognitive load and increasing the machine's ability to isolate human intention, contradiction and validation.
[0094] To further illustrate the relationship between goals and products, Fig. 1 2 visualizes sample product N (1¾}; along with sample goals A, B and C, shown as GA> ¾ and QQ. Within the diagram, IxN matrices allow a mathematical result of true when specific instances of products and goals (1), result in [P{]*[Gi]-[Gf]. Matrix multiplication shows that the ontological encoding of GA C .Pn and Ge c PN; however, the selected intention within Gu (identified in Fig. 12 with an } prevents if. from being a subset of PN, such that G& t P . During content: authoring, the system's Content Management System automatically activates an ordinate whenever a content, author selects a suh-ordinate; such auto-classification ensures, that meaningful subsets are not dismissed (a risk that could occur if content authors were responsible for manually tagging subsumption). In the example domain of Financial Assets, a content author ma select the Subclass Term Insurance when classifying a goal or a product; in this case, the system's Content Management System automatically activates the Class Life and Super Class Insurance, if a content author selects the Sub-attribute Tax-free Growth, the system's Content Management. System automatically activates the Attribute Tax-related. The system's ontological schema facilitates behavior mining; specifically, goals and intentions (where intentions are synonymous with Want and Need categories, and are reflected 1 : 1 within the ontology as Intent) intrinsic to user experience are codified with every click, eliminating commonplace predictive modeling that is based on disparate, non-contextual clicks. Within the system, the user is stating behavioral intent, the tool is aggregating & cross-validating those stated intentions; in such a model, semantics enjoys a one-io-one relationship with user action. Pitfalls of prediction are removed. Data analytics are not based on. browsing behavior, but rather on state intent as an explicit qualifier to selected criteria or implicit clicks. Importantly, semantic equivalence of goals and products is achieved by classifying both against, the same domain-specific instance of the ontology. Finally, instances of contrary concepts (both goals and products) are discovered automatically by using "is-not-a" qualifiers. Attached to attributes, these qualifiers flag opposing concepts.
[0095] The system's ontology represents concepts such that machine-based methods can produce meaningful conclusions specifically to facilitate human decisioning in compressed, timeframes and with- more robust connections, than is otherwise impossible without inordinate human effort. The system's ontology is architected to span domains without violating the underlying raeta- model or schema.—hai is, modeling of domains within the system follows a standardized schema versus requiring disparate ontological structures per domain. Genesereth and Nilsson's 1987 definition of domain conceptualization postulates that for domain D, a set of relations R holds unique meaning, and is represented as <D, R . Modeling within Genesereth and NUsson, disparate domains leverage varied taxonomic. non-taxonomic, partonomic and instantiated relationships; effectively, domain drives structure. Within the present system, however, this one- to-one hypothesis is challenged, such thai structurally:
Figure imgf000028_0001
}0096J Although concepts within the domain differ, as do the number of taxonomic (is-a) relations per construct, the system's meta-model is a standardization For which <UD,- R>, where UD is the universe of domains, and R is a standardized representation of those domains, differing only in domain-spec fic keywords and subsumptive occurrence per construct. Importantly, the ontology' structure and eohstruct-iypes do not morph with the domain; rather, structure, and construet-types are constant— set at Class, Intention and Attribute— -and bearing a rule base for how to apply concepts to those constructs. Within the discipline of decisioning, this rigidity facilitates consistency, scalability and delivery of meaningful decision-ready results-— effectively, the system's reliance upon <Ur> R> facilitates machine-aided decisioning without tackling the standardization of extraction, pruning and refinement of broader human know-Sedge (Maedche & Staab, 2001). The system's ontology leverages both taxonomic and non-taxonomic constructs: taxonomic- being Classes and Attributes, and non-taxonomic being Intentions. Importantly, the non-taxonomic construct -serves as a relational bridge between the two taxonomic constructs, ensuring human intent is captured and applied to neural mapping. Absent this construct, the number of products mapped to user selected criteria would escalate, becoming encyclopedic versus user-centric.
Content nag ment System: Use Cases & Permissions
10097.) The system's Content Management System (CMS), illustrated in 1 108 in Fig. 1 and as indicated by Fig. 13, satisfies three (3) roles: Administrator, Editor and Author. However, the number of Use Cases -is five (5), as the CMS supports two types of Administrators and two types of Authors. One person may fulfill multiple roles: for example, within business-to-eonsumer (B2C) domains, one person may serve as Administrator, Editor and Author. Likewise, within business-to-business (B2B) domains, a corporate customer may collapse the. roles of Administrator and Editor. Relationships between roles shown in .Fig. .13 are described as
1 - Overall Administrator This use case contemplates an overall administrator for the CMS tool, spanning all domains, both B2B & 82 C, and having authority over all CMS users. The Overall Administrator will be abie to add or remove users of the CMS, and to perform all functions available within the CMS.
2 - Corporate Administrator i 62B This role exists so that B2B customers have the abilit to assign administrative ability to someone who may not have content editing expertise; however, for corporate customers, the same person likely performs the roles of Administrator and Editor... Administrators are able to add or remove Editors and Authors, and perform ail functions of those roles,
3 - Editor The primary function of the Editor is to update the status of content from pending to eithe approved or rejected. The Editor serves in a traditional editing role, and has authority to syndicate authored content to qualified reviewer (Subject Matter Experts) such as functional supervisors, legal professionals, marketing personnel and members of R&D. A Domain Editor may designate Subject Matter Experts edit the content directly within the CMS (thereby avoiding the need to copy/paste content into third-party communication tools), by having the Administrator add the Subject Matter Experts, and grant them Editor status.
4 - Full CMS Author Within a domain, Full CMS Authors add content; likewise, they mark existing content as updated or slated for deletion. Since these authors do not directly post updated or deleted content, the production files are secure from erroneous/accidental edits, 'Full CMS Authors have permission to modify content that they did not originally author, since quality control (editor approval) ensures validity of modifications.
5 - Provider input Form Author Within B2C domains, product information is largely supplied by providers. To fulfill these data requirements, providers log into a 'Provider Input Form, and designate via clicks which items they provide. They also provide, via data entry boxes, text that summarizes and qualifies those offerings. Provider input Form Authors do not have access to the CMS.
(00981 Still referring to the system's Content Management System, within Figs. 14 and. 15 are shown logic flows. The data inputs, processes, decision -points and outputs within Figs, 14 and 15 are represented with fully contained descriptions, such that persons reasonably versed in reading logic flows may recreate the system's CMS functionality.
Authoring Goal-to-Product Statements
(0099] Now, referring .to Fig. 16, authors may write a variation of Goal-to-Product Statements, The following sample shows three Goals mapped io a single Product:
Related Goals
Product 1 Goal 1 Goal 2 Goal 3 All Any jOOiOO] Using Boolean operators AND (A) and OR (v), along with the condition of YIELDS (= ), a sampling of three goals mathematically yields 7 potential Produet-to-Gpal relationships (2,! - 1); however, beyond these 7, an author may write additional Goal-to-Producl Statements by developing multiple statements for any single condition. Therefore, given goals Gt, G2, G:3 and product Pi, an author may choose from the conditions in Figure 16 when writing Goal-to-Product Statements, The formula for Goal-to-Product conditions is as follows: for any number of goals (N) which map to. a product (P), and for any number (0 to M) of statements (K) that an author may choose to write which are redundant, the possible number statements is (2N - 1 ) ·! Κ.0..Μ· So for a situation where a product has onl 1 goal mapped to it, binary analysis dictates: (21 - 1) = 1 ; the only viable- condition, is "G ^> P " Beyond writing a statement for this condition, the author may write 0 to many additional statements for this same condition (done so when a single statement becomes lengthy, or when the author/editor believes that the complexity of the Goal-to-Product relationship warrants more than a single statement). In a second example, where a product is mapped to 4 goals, binary analysis dictates; (2'! - 1 } = 15 unique conditions; beyond choosing from these 1.5, an author may redundantly represent K.e..M statements. Regarding display of Goal-to-Product statements, all statements that have been written for a particular product are displayed with that product; no logic within the system reduces/limits the number of statements presented to the user.
Au to- venerated Intel ii ent Feedback Statements
[0 1 1] Within the system, automatic statements display whenever a content author has NOT written a hybrid or custom statement. In the present embodiment of the current invention, random-hashing of up-to 5 variations reduces the sense of the Intelligent- Agent being "robotic.' : Automatic Intelligent Agent feedback exists for two Goal-to-Goal. conditions: 1) Contradictory and 2} Unchecked Goal. Automatic Statements are meaningful for contradictory- conditions since, in most eases, an author need not name specifies of the contradiction, only that it exists; therefore, an auto-statement suffices. The same holds true for Unchecked Goals: often, an author need not elaborate on the similarity of an Unchecked Goal., since the similarity is apparent in the goal's wording. However, within the system, automatic statements are NOT used for Complementary Goals, since the purpose of identifying such goals is to highlight their similar nature with additional, customized coaching. Complementary Statements are used to focus a user on repeating, themes- within their stated goals, and therefore brin focus as they consider results. Goal relationships specified within Unchecked Goals mirror those used to- develop Complementar Goal Statements, since the sole difference is that in the former instance, the user has- tailed to check a related .goal, whereas in the later, the Intelligent. Agent is commenting on the relationship of the selected goals. Within the system, contradictory auto statements are limited to discussing 2 related goals at a time, variations of which are displayed in Fig. 11.
{'00102] Within the system, the following rule is executed when displaying Unchecked Statements: once an Unchecked Goal is identified, that Unchecked Goal should not be identified again,. For example, if an author identifies that goal 1 is related to goal .2, and also identifies that goal 4 is related to goal 2. then the display of Unchecked Statements' adheres to the following scenario (when goals 1 and 4 are checked):
Checked Unchecked Intelligent Agent Statement Displayed?
Y - Identify' goal 2 as unchecked.
N - Goal 2 has 'already been identified via the above
Unchecked Goal Statement.
[00103] However, when goal 2 is checked, but neither goal 1 nor goal 4 is checked, the following holds true:
Checked Unchecked In tell igent . Agent Statement Di splayed? 2 1 Y ~ Identify goal 1 as unchecked. 2 4 Y ···· Identity goal 4 as unchecked. fQ01O j Since the Intelligent Agent provides coaching on a .user's selection of Wants, and Needs, a possibility exists whereby disparate goals share the same piece of feedback, identified by a unique record number. In such instances, the coaching instance will be returned only once, displayed in sequence of its first occurrence.
Social Connection
[00105] Within the system, auto-connecting users, based cm the percentage similarity of criteria they choose for a decision aid, facilitates collective intelligence; the method identifies users whom a user may not know, but who are. decisioning within the same domain. In the current embodiment of the invention, algorithms are used to mathematically assign integer values to user selected criteria and level of importance, as integer attribution can be used to compare decision aids of multiple users and, more important, to flag those users who have decision aids with similarities (based on thresholds which may be administratively raised or lowered over time). Referring now to Fig, 18, there is shown the output table of an algorithm that can be used to- mathematically -assign integer values to users' preferences of a decision -aid, resulting in the ability to compare decision aids and alert users of others who have decision aids with similarities in user preference.
[00106] In further detail, still referring to Fig. 18, 2801 and 2802 indicate that Need 1 (N |.i, for example, for each user of a particular decision aid, has been assigned integer values correspondin to stated importance (as shown beneath the Value header, where 1 and 2 represent Less Important, and 3 and 4 represent More Important), as well as across underlying selection criteria, where 1 indicates user selection of that criteria, and 0 indicates disinterest of that criteria. These values are then compared to produce 2803, 2804 and 2805, which represent the similarity percentage per Want or Need, as well as the overall similarity between the decision aids of two users. This method .results in a "Connect Me" function, whereb Social. Media is exploited in a valuable manner; specifically, two users who do not know one another, but who are attempting, to solve the same problem in a similar manner, are identified by the engine as potentially helpful to one another, as depicted in Fig. 18. The decision remains theirs as to whether or not they invite each other to view/comment on their decision aids.
[00107] Referring now to Figs. 19 through 22, the formulas represented in Boolean terms are not intended to be specific to any particular programming syntax; not are they presented as limitations, of the invention. Rather, these formulas, are presented as embodiments of calculations from which the system derives user relevancy and intelligent Agent feedback, As example, in both Single-Product Domains and Multi-Product Domains, the states Not. important and More important are used within Intelligent Agent feedback to coach the user toward selecting more criteria—when a majority of goals remain in the default state of Not Important— or to lessen the level of importance in cases where a majority of goals has been designated by the user as More Important. In these instances, example Intelligent Agent feedback reads as follows:
"You may want to reconsider the level of importance you assigned to criteria, as the majority are Not Important" and
"You may want to reduce the level of importance you assigned to certain criteria, since the majority of your categories are More Important.""
[00108] Equations used to determine if either of the above conditions is true are represented in Fig. 20.
[00109] Now referring to Figs, 21 and 22, the logic represented in Fig. 21 is referenced within Fig. 25; for Fig. 22, for each Single-Product Domain within the system, a 1 : 1 mapping aligns user-selected criteria with offerings of providers. Although exceptions violate this rule, all data, that is used for comparative purposes is a 1: 1 relationship. Offerings of each provider are entered via a Provider inpu Form— secure, web-accessed tool used by provider personnel (authors) to turn offerings on or off. Although the system's Conten Management System captures this Provider Input Form data offline, the mapping of user-selected criteria to offerings occurs runtime. With Single-Product Domains, there are no equivalents to the Potential Relevant Products (PRP) set and Relevant Products (RP) subset as is the case within Multi-Product Domains. Unlike with Multi-Product Domains, results for Single-Product Domains are not determined based on ontological relationships— no neural network engine is invoked to produce the results; rather, offerings- of each provider are evaluated against user-selected goals/queries using percentage-similarity formulas, enabled by the relationship, as stated above, of goals to products being 1 :1 , such that every goal has a corresponding offering; however, as also stated above, exceptions may violate this rule. In one embodiment of the present invention, an exception occurs for the fourth Need category within certain domains— called Future Needs, in these instances, providers are not evaluated against the Future Needs category; rather, goals in this category are solely used, for coaching/pedagogical purposes. Within the Content. Management System, and signaled via the Goal-to-Goal mapping method, goals within Future Needs that, are complementary or contradictory to other goals are displayed for content authors to review, append and/or customize. When users select combinations of these goals, Intelligent Agent feedback is displayed, forewarning of contradiction, or emphasizing benefits of similarities. In effect, each provider within Single-Produci Domains is a standalone set against which a user's selected goals are compared, via the percentage-based assessments and the devaluing algorithm displayed in Fig. 22, These comparisons are: executed runtime, coinciding with user input.
[001 10] In further detail, still referring to 'Fig. 22, display of results, in terms of relevanc to the user, differs between Single-Product. Domains and Multi-Product Domains. Within Single- roduct Domains of the system, pre-determined thresholds (for example. Resulting Fit > 74%™ Most Relevant), determine the display sequence of providers; the Resulting: Fit threshold is applied only after devaluing tests are conducted for each provider, Single-Product Domains utilize categories of Most Relevant, Relevant and Of Interest, Single-Product Domains have Of interest since, mathematically, certain providers may have questionable relevance to the user, but still offer the same conceptual product for which the user is searching. Since results within the system are returned based on percentage applicability— calculated per category initially, then devalued per category prior to determining an overall percentage applicability (which in itself my be devalued further)— in cases where two results earn equal percentages, then they are displayed in order of assessment. Note that self-learning filters can affect this order, whereby if users access one- result more frequently, then its display may be promoted. By putting contextual considerations into play, the system goes beyond item- by- tem analysis, and is dissimilar to "inventory-based" faceted searches, delivering' much more than, a robotic matching of user- requested items to provider offerings, To achieve this degree of intell ence, different constructs are utilized, including Selected Criteria, Stated importance, Provider Fit per Want/Need Category and Need vs.. Want Consideration,
{00111 ] Algorithms withi the system utilize these constructs in differing -combinations to establish "context'' as well as a coach's "fr me-of-mind" (even if. from a Cognitive Load Theory point of view, a user is unaware of intricacies or repercussions inherent within the context). Via feedback provided by the Intelligent Agent, results "feel right" from a human-coaching point-of- view. The algorithm displayed in Figure 22 devalues providers within Single- Product Domains according to rules thai a real-world coach would apply.
[0011.2-] Finally, still referring to Fig, 22. providers within Single-Product Domains are not penalized for providing .more than what a user requests, only for providing less. The extreme of this case occurs when a user selects zero goals within a Want or Need category; in such cases, the provider's related category is set to 1.00% fulfillment. In all other cases, actual item-by-item comparison of offerings is conducted, in each instance where a provider's offering meets the user-requested Want or Need, that offering is set to true. Future rules are then applied, potentially devaluing the provider, before a final "fit" of Most Relevant, Relevant or Of Interest is reached.
[90113] Flow charts illustrating operation of the above embodiment of the system of the invention are provided in Figs. "23-32. Fig, 23 shows the user action of adding or updating a decision aid to the sy stem:, whereb 10 indicates that the user reviews a list of decision aids, each representing a particular subject, matter and grouped within neighborhoods of content, i further detail, .1 1 indicates that the user provides domain-specific 'filtering criteria, such as search location,, via checkbox, radio button, data entry field, drop down control or other input device common to user-interaction on the web. Within 12 is shown that the user selects among four Want categories and four Need categories, thereby establishing user intention within the subject matter area; 13 indicates that the user selects criteria of interest or self-relevance, then in 14 qualifies that choice by explicitly stating Level of Importance as Less important' or More important. Not important remains the default for any unseleeted criteria. Still referring tq Fig, 23, 15 and 16 indicate decision points for the user, allowing further self-representation of the decision aid by selecting among additional criteria within a Want or Need category, as well as selecting from Wants, and Needs not yet assessed. Block 17 indicates the user's option to save to a member account or to cancel choices associated with the decision aid; and 18 indicates a decision point for the user, allowing further self-representation via subject matters for which additional decision aids are available through the system.
[00114] Referri ng now to Fig, 24, there is shown the user action of viewing system results based on user preferences defined in Fig, 23. in particular where 20 indicates the user action of choosing a -decision aid from the se of 1 to m decision aids, where m is limited only by the instances of decision aids the user has added to their member account, since multiples of any single aid may exist within a member's account, effectively resulting in countless instances of decision aids. While viewing results, the user may consider intelligent feedback, eCommerce products' and services, as well as collective intelligence provided by family and friends, the later only in those instances where the user has designated others with whom to share the decision aid, versus marking it private. To this end, still referring to Fig. 24, 21 tests whether the decision aid has been marked social or private, resulting in 22 if social and 25 if private. 'Within the display of a social postings in 22, the test represented by 23 determines if users neither-specified-nor- potentially- known to the user have demonstrated threshold-based similarity in user preferences for the -same decision aid; when true, 24 is displayed, offering to connect the user to similarly- minded, users.
[00115] Still referring to Fig. 24, step 25 tests the domain-type of the decision aid, displaying Single-Product results in 26, and Multi-Product results in 27. Within 28 is shown the display of Market Links, which follow the display of 26 but not 27, since Multi-Product domains specifically do not contain Market Links. Finally, 29 displays a feature common to both types of domains: Intelligent Agent feedback provides coaching tailored to user preferences and to products deemed relevant to the user, and presented for user consideration.
[00116] As illustrated in Fig. 25, a series of tests are performed by the system to determine display of relevant content within Single-Product Domain containers. Step 30 indicates a user action to view a decision aid, Multi-Product Domains will always fail the test shown in 31,. and will thereby result in 32, which is the display of Multi-Product Domain containers; otherwise, the test indicated by 33 queries a proprietar database for the presence .of -Single-Product Pro viders available to be displayed for user consideration. The subset of providers within 33 excludes those providers failing, to meet geo-centric and other domain-specific filters provided by the user; in addition, the subset excludes content that Persona-type and machine-learning filters, as defined below, deem irrelevant to the user; all other providers are contained within the subset -of 33, and therefore must be assessed for degree of relevanc to the user. To that end, continuing with the flow .chart- of Fig. 25, tests 34 and 36 determine whether -the provider via percentage similarity calculations applied against use preferences, an instance of which is described in Fig. 21 , as well as devaluing methods, an. instance of which is described in Fig. 22 is deemed Most Relevant or
Relevant, then is displayed accordingly within 35 or 37; in instances where the tests 34 and 36 both prove false, the provider is displayed as Of interest, shown in 38, since all providers within the 33 subset are to ..be .-shown, f 00 17) Now referring to Fig. 26, step 40 indicates the user action of choosing to acces either social postings— whereby famil and friends have been granted permission to review and
-comment on the decision aid or- to access Intelligent Agent feedback contained within the agent's b'log, When test. 41 proves true, the system displays postings of those members invited to view the decision aid, shown in 42; when test 41 proves false, the user has chosen to view intelligent Agent expertise for the decision aid, whereb in 43 through 48 the system determines then displays the appropriate context-rich content. (00118) As illustrated n. Fig. 27, a user establishes user .profile data, thereby granting membership benefits to the user, such benefits including user ability to save decision aids for later access, to invite family and friends to review and comment upon certain decision aids, and to keep other decision aids private.. Within 50 is shown the user action of accessing the profile editor; 51 tests if the user is signed-ίη as a member and, if true, captures profile updates, in 55 and displays those updates in 56 for user confirmation. When 51 proves false, 52 requests that the user establish membership.; the test shown in 53 validates the membership attempt, and if true, captures and displays remaining membership information in.55 and 56; otherwise, if false, 54 warns the users that decision aids can neither be saved nor shared without first establishing valid membership.
1001 19) Referring now to Fig. 28, there is shown the user action of accessing a decision aid defined by another user, and for which permission to review & comment has been granted. In further detail, still referring to the embodiment of the invention of Fig. 28, 60 indicates that a user has selected-— from the View Others" Decision Aids container identified in Fig. 2A, item 1203— to access another member's decision aid. 61 indicates the visual display of that decision aid's Wants and Needs, as well as its results, while 62 indicates that a Postings thread is displayed in the feedback container, rather than the Artificial Intelligent Agent's blog that is shown in Figure 4A. item 1401. Still, referring to Fig. 28, 65 and 66 respond to the user request to review Intelligent Agent feedback. Finally, within 63 is shown a test for the presence of similar users, resulting in 64 when true, which blocks the offer to connect to users since the current user is an invited viewer of the decision aid versus the owner of the decision aid— and therefore does not have authority to grant, view permission to other users.
[00120] Referring now to Fig, 29, there is shown the knowledge engineering process to create and map a Provider Input Form based on a decision aid, where the Provider Input Form enables providers a method for posting products and services. Such product and sendees may, through similarity matching algorithms for Single-Product Domains, or through ontologica) subset analyses for Multi-Product Domains, be deemed as relevant, to user preferences within the decision aid. Integral to the function of Fig. 29 is a knowledge-mapped target domain, constructed via a knowledge acquisition process and populated via electronic forms or surveys,, stored in proprietary database form, and having records within its search domain that reflect, either directly or through related' products and services, the universe of potential -user-specific criteria tied to Wants and Needs, in further detail, still referring to Fig. 29, 70 indicates the content engineer's decision of initiating a new Content input Form based upon one of two proprietary templates; 71 and 72 indicate the content engineer's action of mapping a decision aid's four Want categories, four Need categories, and relevant underlying criteria into the Content Input Form for Single-Product Providers, who are to be evaluated as Most Relevant, Relevant or Of Interest based on user preference; 73 indicates the display of the newly defined Content Input Form for Single-Product Providers. Items 74 through. 76 represent the mapping and display of a Content Input Form for Multi-Product Providers, whose offerings of 1 :M products and services are to be evaluated against user preference, and whose offerings may be returned to the user either as Most Relevant or Relevant, since no Of Interest designation is associated with Multi-Product Providers.
{00121] Referring to Fig, 30, a method is- shown for determining Intelligent Agent feedback to the user, specificall aligned with user-selected criteria and stated importance of each criteria. Intelligent Agent feedback triggers based on potentially relevant yet unchecked selections, as well as on the presence of contradictory or complimentary selections within a decision aid, across decision aids, o from a Persona-type baseline, amassed by selections of other users demonstrating similarity in demographics and user preference, in further detail, still referring to Fig. 30, step 80 tests if selected criteria are to be assessed within or across decision aids; 81, 82, 86 and 87 determines the appropriate cross-decision aid or cross-user analyses; 83 through 86 and 88 determine the appropriate intra-user and intra-decision aid analyses; in each instance, the extracted Intelligent Agent feedback is displayed in 89. The method represented in. Fig. 30 provides occurrences of semantic intelligence reflective of the user's selection criteria and stated importance; such feedback is delivered to the user with the purpose of refining potential results and assisting in better decision-making. |0 122) Referring now to Fig. 31 , there is shown the -method for visually indicating thai a decision aid has been updated. The label for a decision aid is visually distinguished whenever intelligent Agent feedback, social posting or ©Commerce- activity has occurred since the user last viewed the decision aid— hether that a d is the users, or that of a family 'member; or friend. In. further detail, still referring to fig. 31, 90 indicates the user action of opening a decision aid container— either View My Decision Aids or View Others' Decision Aids. Within 91 and 96 are shown system processes and queries to determine which decision aids have received updates, and. to graphically highlight all in which the update test proves true.
[00123] Referring now to Fig. 32. there is shown the method for connecting two potentially unknown users, based on system-identification similarity for a decision aid that both users have included within their member accounts. In further detail, still referring to Fig. 32, 1 10, 120, 130 and 190 indicate an automated method for assignin integer values to user preferences within a decision aid; 140 .and 150 indicate a system method and query to compare the values of two aids and determine if conditions are met such thai the similarities are greater- than or equal-to an administrator-assigned threshold; when a true condition exists, 160 indicates that each of the two users will be given the opportunity to accept viewing the other's decision aid;; 1 70. 180 represent a system query and method for cycling all decision aids through the comparison routine.
100124] Referring now to Fig, 33-a through 33-f example user interfaces are shown to convey a user's progress through major capabilities of .the system. The renderings shown in Fig. 33-a and 33-f .are common across Single-Product and Multi-Product Domains; those shown in Fig. 33-b through 33-e represent an embodiment of the Single-Product Domain, highlighting potential user actions.
(00125] Still referring to the series of interfaces of Fig, 33-a through 33-f. within Fig. 33-a a user selects among a list of domains, as shown in 3301 , This walkthrough pursues a user- selected domain of "Explore Senior Living Facilities." In 3302 the user is shown to have established. a user profile; as such, the user is later presented the option of saving the decision aid before exiting the "View Product Details" interface shown in Fig, 33 -c through Fig. 33-e. By saving the decision aid, the user has future access to the decision aid via the '"Manage M Galaxy" container, .shown in its closed state in 3303 of Fig. 33-a, and shown in its open state in 3316 of Fig. 33-f.
(00126) Now referring to Fig, 33-b, the interface for selecting criteria and level of importance for "Explore Senior Living Facilities'* is displayed to the. user. After entering filtering information such as location in 3.304, then selecting family members and friends with whom the user wishes to share the decision aid in 3305, the user reviews criteria contained beneath four Want categories and four Need categories, shown in 3306 and .3307. As illustrated in 3307, the lour Wants categories arc Setting, Living Space,. Lifestyle and Well Being, while the four Needs categories are Care, Medical, Financial and Future. While each decision aid contains exactly four Wants and four Needs, the number of criteria within each category depends on the topic, and may number from few to dozens or more. Criteria are authored in the form Of attributes or goals, examples of which are shown below for "Explore Senior Living. Facilities";
Attribute-style Criteria Soaf-style Criteria
United o n-j kitc en Desire; ,u age pia ft
Private Paiiu or &k'ony Access to raedici! car*
/A Maintain a'rtivt lifestyle
Permitted Mini!tiiiS axpsnditure
.Gnsite medical facility heirs- Refiineabie entrance security tiiratigh costs
[06127] The user, may change the criteria default stale of "Not Important" to either "Less important" or "More important," or may choose to leave the criteria as siNot important," As levels ofimportance are chosen for criteria* the bullsey graphic shown- in 33-07 automatically updates to display, in aggregate, the level of importance for each Want and Need category; in addition, levels of importance drive relevancy of results returned to the user, as described in relation to Fig. 22 and elsewhere. Once the user is satisfied with criteria -selections and stated level of importance,, the user may view intelligent Agent feedback and results relevant to the selections by clicking 3308 "Vie Results,'' f 00128] Now referring to Fig. 33-c, and still continuing the walkthrough of system interfaces, the user is presented with Intelligent Agent feedback in 3309. Feedback is triggered by user-specified criteria, and includes observations regarding criteria chosen of similar-nature, criteria chosen of eontradictory-nature, and unchecked criteria that may be of value based on other user selections; additional feedback may include suggestions triggered by actions of similarly-minded users, as determined through the adaptive Persona Type method described with Fig. 7. Within 33.10 the user may click — Save" to store a piece of Intelligent Agent feedback within the member' s profile, enabling quick access to the. feedback, as shown in items 3316 and 3317 of Fig. 33-f. Still referring, to the embodiment of the invention of Fig. 33-C, 331 1 shows results returned to the user, grouped within categories of "Most Relevant," "Relevant," and "Of interest." By selecting one of the results., the user is shown a detailed description of the result in Fig, 33-d. item 3312. f rom here, the user may choose to print the detailed result or, as shown in 3313, either i) save the result to the member's profile, or ii) share the result with designated family members and friends via the Postings container, shown in Fig. 33~e, item 3314. Once the user has reviewed Intelligent Agent feedback, relevant results and postings, the user may return to the main interface, which lists decision aids chosen and available to the user, by clicking the ^Sho Galaxy'* co in 3315.
(00129] How referring to Fig, 33-f, the "Manage My Galaxy" container within 3-316 shows decision aids for which the user has chosen Wants and Needs, and for which the user has saved particular Intelligent Agent feedback and. relevant results for quick access, as shown in 3317. Finally, the user of this walkthrough may choose to exit the system clicking "Sign out" in 3318.
1001301 While the preferred embodiments of the invention have been shown and. described, it will he apparent to those skilled in the art that changes and modifications may be made therein without departing from the spirit of the invention, the scope of which is defined by the appended claims..

Claims

WHAT IS CLAIMED IS:
1, A system for aiding a user in making decisions with respect to products and services listed on the internet comprising:
a. a remote access device adapted to permit the user to input data and review results; b. a server in communication with the remote access device and the Internet, said server programmed to:
i) capture user preferences input through the remote, access device that relate to the user as e videnced by self selection arid stated level of importance, to create a decision aid;
u) summarize the user preferences input such that overall level -of-importance data is displayed for the decision aid through the remote access device; iii) display intelligent agent observations and coaching specific to the user preferences Input and associated relevant output on the remote access device;
iv) capture tamily and friends social media input from family members and friends designated by the user via the remote access device for the decision aid for which the user has granted review and comment permissions;
v) display the family and friends social media on the remote access device; vi) collect additional content relevant to the decision aid from the.
internet; vii) display the additional content on the remote access device; viii) collect data including providers and associated products and/or services based on the decision aid;
ix) process the- collected data to determine degrees of relevancy to the user based on the decision aid and create output data;
x) display the output data in degrees of relevancy to the user on' the remote access device.
2. The system of claim I wherein the server includes a neural network engine and is also programmed to creat e ontoiogical data based on data of the decision aid and use the ontological data and the neural network engine during steps b.viii) and b.ix).
3. The system of claim 2 wherein the server is programmed to include user-centric filters and discounting rules that are applied in step b.ix).
4. The system of claim I wherem the server is programmed to use sub-category analysis of percentage-based fit in step b.ix).
5. The system of claim 4 wherein the server is programmed to include user-centric filters and discounting rules that are applied in step b.ix).
6» The system of claim 1 wherein the decision aid acts as a secondary, separate profiling- mechanism for' the- user, thereby facilitating representation of that user as related to a singular subject matter at a time,
7, The system of claim 1 wherein the stated l evel o importance by the user-is treated as- a directive in ste b.ix).
8. The system of claim 1 wherein step b.x) includes initially displaying products and/or services without providers and then displaying providers for products and/or services selected by the user via the remote access device,
9. The system of claim 1 wherein a plurality of decision aids may be created and stored on the server.
10. The system of claim I wherein the server is programmed with a similarity matching, algorithm that is used to in step b.ix).
1 1. The system of claim 1 wherein the decision aid may designated on the 'server as social and thus open to access by other users through the Internet or private and not open to access by other users through the Internet.
12. The system of claim 1 wherein the server is programmed to present a plurality of criteria to the user via the remote access device and wherein the self selection of step b,i) includes the user selecting criteria from the plurality of criteria and wherein the intelligent agent observations considers potentiall relevant unselected criteria.
13. The system of claim 1 wherein the server is programmed to present a plurality of criteria to the user via the remote access device and wherein the self selection of step b.i) includes the user selecting criteria from the plurality of criteria and wherein the intelligent agent observations considers presence of contradictory or complementary selected criteria.
14. The system of claim 1 wherein a plural i t of decision aids are stored on the server and the server is programmed to present a plurality of criteria to the user via the remote access device and wherein the self selection of ste b.i) includes the user selectin criteria from the plurality of criteria and wherein the intelligent agent observations considers presence of contradictory o -complementary selected criteria across the multiple domain aids.
15. The system of claim 1 wherein the server includes an Exception Rule Base that is used in step .ix).
16. The system of claim i wherein the serve is programmed to present a plurality of criteria to the use via the remote access device and wherein the stated level importance of step bi) includes the user assigning a ranking of "Not Important*', "Less Important" or "More Important" for each criteria selected from the pl urali ty of criteria.
17. The system of claim 1 wherein the decision aid creates ontoiogical data for use in step b.viii).
18. A method for aiding a user in making decisions with respect to products and services listed on the internet comprising:
a. providing a remote access device adapted to permit the user to input data and review results and a server in communicatio with the remote access device and the Internet:
b. capturing user preferences on the server input through the remote access device that relate to the user as evidenced by self selection and stated level of importance to create a decision aid;
c. summarizing the user preferences input such that overall ievel-of-impoiiance data is displayed for the decision aid through the remote access device;
displaying intelligent agent observations and coaching specific to the user pre rferenc s input and associated relevant output on. the remote access device; e, capturing family and friends social media input, from family members and friends designated by the user via the remote access device for the decision aid for which the user lias granted review and comment -permissions;.
f, displaying the family and friends social media on the remote access device; g, collecting additional content relevant to the decisio aid from the internet;
h, displaying the additional content on the remote access device:
i, collecting data including providers and associated products and/or services
based on the decision aid;
j, processing the collected data to determine degrees of relevancy to the user based on the decision aid and create output data;
k. displaying the output data in degrees of relevancy to the user on the remote
access device.
1 . The method of claim 18 wherein step j. includes application of user-centric filters and discounting rules,
20. The method of claim 18 wherein step j. includes use of sub-category analysis of percentage-based fit.
2.1. The method of claim 18 wherein step k includes ini tially displaying products and/or services without providers and then displaying providers for product's and/or services selected by the user via the remote access device.
22. The method of claim I further comprising the steps of creating and storing multiple decision aids on the server.
23. The method of claim 18 wherein step j, uses a similarity matching algorithm.
24. The method of claim 18 further comprising the step of presenting a plurality of criteria, to the user via the remote access device for use in step b,
2.5. The method of claim 18 wherein step j includes use of an Exception Rule Base,
26. The method of claim 18 further comprising the step of presenting a plurality of criteria to the user via the remote access device and wherein, the stated level importance- of step b. includes user assigned rankings of "Not Important", "Less Important*' or "'More important'' for each criteria selected from the piuraiity of criteria,
27. The method of claim 18 further comprising the. step of creating ontological data using the decision aid for use in step i,
28. A method for establishing a Persona-type baseline for a user, from which results from an Internet search are further filtered for relevancy, the method consisting of:
a. providing a remote access device adapted to permit, the user to input data and review results and a server in communication with the remote access device and the Internet;
b. creating an initial Persona-type baseline on the server using data input by the user on the remote access device;
c. capturing on the .server implicit and explicit user actions- input via the remote access device;
d. capturing actions and inactions of like-users from the. internet using the server; and
e. adjusting the initial Persona-type- baseliine to reflect the: implicit and
explicit user actions and the actions and inactions of like-users captured on the server.
2.9, A system for aiding- a user in making decisions with respect to products and services, listed on the internet comprising:
a. a remote access device adapted to permit the user to. input data and review results: fa. a server in communication with the remote access device and the internet, said server programmed to;
i) present the user with, a plurality of domains via the remote access device; ii ) enable the use to select one of the plurality of domains via the remote access device;
hi) present the user with a plurality of categories based on the selected
domain;
iv) present the user with a plurality of criteria for each of the plurality of categories;
v) enable the user to rank each of the plurality of criteria; and vi) process tanks assigned to the plurality of criteria to create ontologieai data;
vii) use the ontologieai data to retrieve relevant results from the Internet.
30. A method for aiding a user in making decisions with respect to products and services listed on the Internet comprising: providing a remote access device adapted to permit the user to input data and review results and a server in communication with the remote access device and the internet;
presenting the user with a plurality of domains stored on the server via the remote access device;
enabling the user to select one of the plurality of domains via the remote access device;
presenting the user ith a plurality of categories stored on the server based on. the selected domain;
presenting the user with a plurality of criteria stored on 'the server for each of the plurality of categories;
enabling the user to rank each of the plurality of criteria on the server via the remote access device; and
processing ranks assigned to the plurality of criteri on the server to create ontological data; and
using the ontological data to retrieve relevant results from the internet to the
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