CN107832433A - Information recommendation method, device, server and storage medium based on dialogue interaction - Google Patents

Information recommendation method, device, server and storage medium based on dialogue interaction Download PDF

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Publication number
CN107832433A
CN107832433A CN201711129842.7A CN201711129842A CN107832433A CN 107832433 A CN107832433 A CN 107832433A CN 201711129842 A CN201711129842 A CN 201711129842A CN 107832433 A CN107832433 A CN 107832433A
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China
Prior art keywords
user
topic
theme
query message
dialogue
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CN201711129842.7A
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Chinese (zh)
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CN107832433B (en
Inventor
戴岱
�田�浩
李大任
高原
黄波
乔超
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Beijing Baidu Netcom Science and Technology Co Ltd
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Beijing Baidu Netcom Science and Technology Co Ltd
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/90Details of database functions independent of the retrieved data types
    • G06F16/903Querying
    • G06F16/9032Query formulation
    • G06F16/90332Natural language query formulation or dialogue systems
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/90Details of database functions independent of the retrieved data types
    • G06F16/95Retrieval from the web
    • G06F16/951Indexing; Web crawling techniques
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F40/00Handling natural language data
    • G06F40/30Semantic analysis
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L67/00Network arrangements or protocols for supporting network services or applications
    • H04L67/50Network services
    • H04L67/55Push-based network services

Abstract

The embodiment of the invention discloses information recommendation method, device, server and the storage medium based on dialogue interaction.Methods described includes:According to the user behavior feature and/or user model of history read interface, theme query message is read in generation, and the user model includes following at least one:User interest, user pay close attention to topic and user pays close attention to author;Reading theme query message according to generation engages in the dialogue with user to be interacted;The reading theme of the user is determined according to dialogue interaction content;By the message push matched with the reading theme to the user.The embodiment of the present invention is by natural language understanding and based on artificial intelligence technologys such as dialogue interactions, different topic information flows is connected, helps user to explore potential interest, improves user's duration and viscosity, user model is more accurately built and controlled simultaneously, improves Consumer's Experience.

Description

Information recommendation method, device, server and storage medium based on dialogue interaction
Technical field
The present embodiments relate to technical field of information interaction, more particularly to based on dialogue interaction information recommendation method, Device, server and storage medium.
Background technology
With the development of science and technology and being continuously increased for internet information, requirement of the user to internet recommendation information is increasingly It is high.
The information recommendation mode of mobile Internet is broadly divided into two classes at present, and one kind is interested by user's Behavior mining Label structure user model recommended, another kind of pushed away by using the dynamic concern of householder people interested or topic Recommend.All there is the problem of certain in this two category informations way of recommendation, the user model of the first kind is excavated by indirect user behavior Obtain, therefore the accuracy recommended is not very good, user model is typically implicit in addition, and user can not actively be set or directly Modification, causes the new interest tags of user can not add in time, out-of-date or wrong interest tags can not be deleted in time, influence to use Experience at family;Second class is due to needing user actively to initiate concern, it is difficult to excavates potential (the not paying close attention to) interest of user, is unfavorable for Improve user and use duration and viscosity.
The content of the invention
, can the embodiments of the invention provide information recommendation method, device, server and the storage medium based on dialogue interaction To improve user's duration and viscosity, user model is more accurately built and controlled, improves Consumer's Experience.
In a first aspect, the embodiments of the invention provide the information recommendation method based on dialogue interaction, including:
According to the user behavior feature and/or user model of history read interface, theme query message is read in generation, described User model includes following at least one:User interest, user pay close attention to topic and user pays close attention to author;
Reading theme query message according to generation engages in the dialogue with user to be interacted;
The reading theme of the user is determined according to dialogue interaction content;
By the message push matched with the reading theme to the user.
Second aspect, the embodiment of the present invention additionally provide the information recommending apparatus based on dialogue interaction, including:
Query message acquisition module, for the user behavior feature and/or user model according to history read interface, generation Theme query message is read, the user model includes following at least one:User interest, user pay close attention to topic and user's concern Author;
Talk with interactive module, interacted for being engaged in the dialogue according to the reading theme query message of generation with user;
Topic module is read, for determining the reading theme of the user according to dialogue interaction content;
Pushing module, for will be with the message push that matches of reading theme to the user.
The third aspect, the embodiment of the present invention additionally provide a kind of server, and the server includes:
One or more processors;
Storage device, for storing one or more programs;
When one or more of programs are by one or more of computing devices so that one or more of processing Device realizes the information recommendation method as described above based on dialogue interaction.
Fourth aspect, the embodiment of the present invention additionally provide a kind of computer-readable recording medium, are stored thereon with computer Program, the information recommendation method as described above based on dialogue interaction is realized when the program is executed by processor.
The embodiment of the present invention is read by the user behavior feature and/or user model according to history read interface, generation Theme query message, and engage in the dialogue and interact with user according to the reading theme query message of generation, according to dialogue interaction content The reading theme of the user is determined, by the message push matched with the reading theme to the user.Due to of the invention real Example is applied by the artificial intelligence technology such as natural language understanding and dialogue interaction, different topic information flows is connected, helped User explores potential interest, improves user's duration and viscosity, while more accurately builds and control user model, improves user's body Test.
Brief description of the drawings
Fig. 1 is the flow chart of the information recommendation method based on dialogue interaction in the embodiment of the present invention one;
Fig. 2 is the flow chart of the information recommendation method based on dialogue interaction in the embodiment of the present invention two;
Fig. 3 is the strong interactive form surface chart of the information recommendation method based on dialogue interaction in the embodiment of the present invention two;
Fig. 4 is the weak interactive form surface chart of the information recommendation method based on dialogue interaction in the embodiment of the present invention two;
Fig. 5 is the structural representation of the information recommending apparatus based on dialogue interaction in the embodiment of the present invention three;
Fig. 6 is the structural representation of the server in the embodiment of the present invention four.
Embodiment
The present invention is described in further detail with reference to the accompanying drawings and examples.It is understood that this place is retouched The specific embodiment stated is used only for explaining the present invention, rather than limitation of the invention.It also should be noted that in order to just Part related to the present invention rather than entire infrastructure are illustrate only in description, accompanying drawing.
Embodiment one
Fig. 1 is the flow chart of the information recommendation method based on dialogue interaction in the embodiment of the present invention one, and the present embodiment can Suitable for the situation of information recommendation, this method can be performed by the information recommendation method device based on dialogue interaction, and the device can Realized in a manner of using software and/or hardware, such as the device is configured in server.As shown in figure 1, this method is specific It can include:
Theme inquiry is read in step 110, user behavior feature and/or user model according to history read interface, generation Information, the user model include following at least one:User interest, user pay close attention to topic and user pays close attention to author.
In the present embodiment, the user behavior of the history read interface is characterized in readding history by statistical analysis user The user that the behavioral data at reading interface obtains accesses the behavioural habits and rule at interface, such as user behavior feature can be click on The interest tags number that includes of article or click maximum first three the interest tags number of the number that includes of article.It is described to read master Topic query message is that the historic user obtained according to user behavior feature and/or user model accesses more or interested reading The suitable related inquiry sentence of theme generation.
Step 120, the reading theme query message according to generation engage in the dialogue with user and interacted.
Specifically, being interacted with the dialogue of user by natural language understanding technology to realize, inquiry sentence is sent to use Family, user answer this inquiry, can propose new inquiry sentence according to the answer of user or carry out follow-up step 130, so as to complete Interacted into dialogue.Wherein, the sentence of inquiry is answered for user, is first scanned from left to right by word, recognizes each single according to dictionary The meaning of a word and usage of word, the combination of phrase and sentence is determined according to syntactic rule, is obtained according to semantic rules and inference rule defeated Enter the implication of sentence, search knowledge base, exported according to thematic knowledge and the response of sentence create-rule tissue, vocabulary therein, syntax Rule, semantic rules, inference rule and thematic knowledge prestore.
Exemplary, if according to news was read before user, generating inquiry sentence, " wanting to understand has what big new today Hear", if user answers " good ", propose that new inquiry sentence " is wanted to understand the news of amusement circles according to the answer of user ", user continues to answer.
It should be noted that the selection of candidate's information options for user can also be generated according to theme query message is read, use Family can also be by selecting candidate's information to answer a question inquiry back and forth, wherein candidate's information option is according to reading theme query message The picture of obtained relevent information or link, such as " information 1 ", " information 2 " and " information 3 " in Fig. 3.
Step 130, foundation dialogue interaction content determine the reading theme of the user.
Specifically, the answer content by the user in being interacted with user session, it may be determined that user currently wants to know about Information, the current reading theme of user can be determined according to the information, wherein read theme refer to read main contents, read It can be meeting to read theme, race, moved, personage etc., such as the Olympic Games.
Step 140, by with the message push that matches of reading theme to the user.
Specifically, the various default labels for reading theme can be built in advance, and master is read for information addition is corresponding Label is inscribed, will be matched with the reading theme with the label of each information, the information that the match is successful is defined as readding with described Read the information of theme matching.Alternatively, it is also possible to be determined institute according to the subject key words included in reading theme and each information State and read theme and the matching degree of each information, and matching degree is met that the information of condition is defined as what is matched with the reading theme Information.
The embodiment of the present invention is read by the user behavior feature and/or user model according to history read interface, generation Theme query message, and engage in the dialogue and interact with user according to the reading theme query message of generation, according to dialogue interaction content The reading theme of the user is determined, by the message push matched with the reading theme to the user.Due to of the invention real Example is applied by natural language understanding and based on the artificial intelligence technologys such as interaction are talked with, different topic information flows is connected, User can be helped to explore potential interest, improve user's duration and viscosity, while more accurately build and control user model, carried High Consumer's Experience.
Exemplary, 110 can include:According to the user behavior feature and/or user model of history read interface, it is determined that The topic that the user currently pays close attention to;The update status generation for the topic currently paid close attention to according to the user, which is reminded, reads in renewal The query message of appearance.Specifically, it can be that user compares pass that user, which during historical viewings interface, has the content of some topics, Note, the topic of these users concern is determined according to the user behavior feature and/or user model of history read interface, if institute Stating the topic of concern has renewal, then the query message of user's reading more new content is reminded in generation, such as " topic that you pay close attention to has newly Selected article, be now to look at”.
Further, can also include after the topic that the above-mentioned determination user currently pays close attention to:Read according to history The user behavior feature at interface, there is provided more information that the user currently pays close attention to topic select for the user;According to history The user behavior feature of read interface, there is provided the information that the user currently pays close attention to the associated topic of topic is selected for the user Select.Specifically, according to the behavioural characteristic of user's history read interface, from depth and range both direction, recommend more current The information of topic and associated topic is paid close attention to, the inquiry sentence of generation is as " you still want to understand in depth on which topic of B" or " recommending the related more topics of B for you " etc..
Exemplary, it can also include after step 120:The dialogue interaction content of foundation user, determine the yardstick of user And/or style;According to the yardstick label and/or style label added in advance in information, the information that user matches is determined.Specifically , the measurement of the yardstick and/or style of the user is that some pre-set can express yardstick and/or style rank Word, such as " terror " " rudimentary " etc., can voluntarily be set as needed.By the text of user session interaction content carry out classification and Extraction, the word extracted are contrasted with the word pre-set, and maximally related word is defined as to the yardstick and/or style at family.So The word for representing user's yardstick and/or style and the yardstick label added in advance in information and/or style label are carried out pair again afterwards Than, by maximally related information be defined as user matching information.
Exemplary, it can also include after step 140:If user closes a upper read interface, and is read to upper one Interface does not have reading behavior, then generates the feedback query message of a upper read interface.Specifically, if user is to a upper read interface There is no any behavior to be shut off, then generate the inquiry sentence of feedback, such as " recommend you to be satisfied with above", " recommend you above all It is unsatisfied with" or " recommend where you are unsatisfied with above" etc..Wherein, the behavior of a upper read interface includes the article clicked on Count, the interest tags number being present in user model, the point that the interest tags number that the article of click includes, the article of click include Maximum first three of number that interest tags number that what the article hit included be not present in user model, the article clicked on include First three interest tags for the number maximum that interest tags number and/or the article of click include account for ratio of whole labels etc..
Embodiment two
The flow chart of the information recommendation method based on dialogue interaction in Fig. 2 embodiment of the present invention two.The present embodiment is upper On the basis of stating embodiment, the above-mentioned information recommendation method based on dialogue interaction is further optimized.Accordingly, as shown in Fig. 2 The method of the present embodiment specifically includes:
Step 211, user behavior feature and/or user model according to history read interface, are determined residing for the user Current scene type.
In the present embodiment, the scene type is presently in time and state including user, and scene type can basis Need voluntarily to set.According to the user behavior feature and/or user model of history read interface, it may be determined that the specific field of user Scape type.Such as current time is 8 points of morning, according to the time, it may be determined that the scene type of user be " getting up the time " or " having breakfast the time ".
Step 212, according to default scene type and read theme between incidence relation, by the current scene type The reading theme of matching is as theme to be recommended.
Specifically, the reading theme associated with this scene type is searched for according to the scene type of user, and according to association The significance level selected section of relation is read theme and can voluntarily set as theme to be recommended, the wherein significance level of incidence relation Put.
Step 213, according to the theme to be recommended generation reading theme query message.
The inquiry sentence of the reading theme can be generated according to theme to be recommended, if such as the scene type of user be " at 3 points in afternoon ", the proposed topic for the treatment of each other determined according to step 212 is " cross-talk of making laughs ", and inquiry sentence can be that " feel sleepy in the afternoon Some selected cross-talks of making laughs, want to look at”.
Step 220, the reading theme query message according to generation engage in the dialogue with user and interacted.
Step 231, the dialogue interaction content according to user, determine the intention of user;
Wherein, the intention of the user refer to user to from dialogue interaction content in extract user interest, concern Topic or author want the operation carried out.
Step 232, the intention according to user, pay close attention to user interest, user topic or user pays close attention to author and carries out additions and deletions Processing.
Specifically, according to the intention of user, add new user interest, user pays close attention to topic or user pay close attention to author or Delete user interest, user pays close attention to topic or user pays close attention to author.
Step 240, foundation dialogue interaction content determine the reading theme of the user.
Step 250, by with the message push that matches of reading theme to the user.
Step 261, in user's closing after a read interface, if detect user click on any topic information the frequency it is big In predetermined threshold value, then topic is paid close attention to using the topic as recommendation.
In the present embodiment, the frequency that topic information can be clicked on to user pre-sets suitable threshold value, if user's point The frequency for hitting some topic information is more than the threshold value, then using the topic as concern topic is recommended, words are wherein clicked on the day of user The frequency of topic includes whether the number that the same day first enters into the topic and the same day enters the topic.
Step 262, the query message according to recommendation concern topic generation concern topic addition.
Specifically, according to recommend concern topic can generate concern topic add inquiry sentence, if such as step 261 it is true Fixed recommendation concern topic is " A topics ", and inquiry sentence can be that " you want to pay close attention to A topicsThere is new selected article to push away Recommend to you!”.
Exemplary, Fig. 3 is the strong interaction shape of the information recommendation method based on dialogue interaction in the embodiment of the present invention two Formula surface chart, as shown in figure 3, strong interactive form is embodied in special interactive interface, in the interactive interface according to with The theme information and related information, such as user that the dialogue interaction content meeting recommended user at family currently wants to know about are wanted " to recommend The article of some machine learning ", reply " relevent information that machine learning is recommended for you " and pushed correlation " information 1,2 and afterwards 3 " select for user, while can generate new inquiry sentence " helping you to recommend other related topics of some machine learning ", root It may proceed to recommend information according to the reply of user or produce new inquiry sentence.In addition, can be with good grounds user in interactive interface The inquiry sentence of historical behavior generation, such as " looks at external major issue " or " sports news " efficiently selects for user.User selects After selecting the information for wanting reading, into read interface, in read interface the information that user selects can be adjusted to be read for user automatically, Concern, topic of interest can also be selected, do not like topic or closes the operation such as this read interface.
Fig. 4 is the weak interactive form surface chart of the information recommendation method based on dialogue interaction in the embodiment of the present invention two, Weak interactive form is embodied in no special interactive interface, but realizes that the dialogue with user is handed over by the interactive dialogue frame of ejection Mutually.As shown in figure 4, in addition to the information recommended according to user's history behavior, new inquiry language can be generated in interactive dialogue frame Sentence, such as " needing me to help you to pay close attention to A topics ", there can be simple options for user selection to be asked to answer in interactive dialogue frame Ask.
User behavior feature and/or user model of the present embodiment according to history read interface, are determined residing for the user Current scene type or the topic currently paid close attention to, and accordingly generate query message and engaged in the dialogue with user and interacted, according to dialogue Interactive content determines the intention and style of user, and the information for selecting to match with reading the intention and style of theme and user is recommended To user, in addition after a read interface is closed in user, the frequency generation addition concern of topic can be clicked on according to user The query message of topic or the generation feedback query message when user does not have reading behavior.The present embodiment, which possesses, actively pays close attention to function While, moreover it is possible to by dialogue, guiding user explores and found the potential interest of oneself, improves using duration and gluing for user Property, and the content for being not desired to see just can be masked by the instruction of simple natural language, Consumer's Experience is more preferable.
Embodiment three
Fig. 5 is the structural representation of the information recommending apparatus based on dialogue interaction in the embodiment of the present invention three.Such as Fig. 5 institutes Show, described device can include:
Query message acquisition module 310, for according to history read interface user behavior feature and/or user model, Theme query message is read in generation, and the user model includes following at least one:User interest, user pay close attention to topic and user Pay close attention to author;
Talk with interactive module 320, interacted for being engaged in the dialogue according to the reading theme query message of generation with user;
Topic module 330 is read, for determining the reading theme of the user according to dialogue interaction content;
Pushing module 340, for will be with the message push that matches of reading theme to the user.
Exemplary, the query message acquisition module 310 can include:
Scene type unit, is specifically used for:The user behavior feature and/or user model of foundation history read interface, really Current scene type residing for the fixed user;According to default scene type and the incidence relation between theme is read, by institute The reading theme of current scene type matching is stated as theme to be recommended;The reading theme is generated according to the theme to be recommended Query message.
Exemplary, the query message acquisition module 310 can include:
Topic unit, is specifically used for:According to the user behavior feature and/or user model of history read interface, institute is determined State the topic that user currently pays close attention to;The update status generation for the topic currently paid close attention to according to the user, which is reminded, reads more new content Query message.
Further, the topic unit specifically can be used for:
After determining the topic that the user currently pays close attention to, the user behavior feature according to history read interface, there is provided institute State user and currently pay close attention to more information of topic for user selection;According to the user behavior feature of history read interface, carry The information that the associated topic of topic is currently paid close attention to for the user selects for the user.
Exemplary, the query message acquisition module 310 can also include:
Information option cell, for the user behavior feature and/or user model according to history read interface, generation is read After theme query message, according to reading theme query message generation candidate's information options for user selection.
Exemplary, the device can also include frequency judging unit, be specifically used for:
In user's closing after a read interface, if detecting, user clicks on the frequency of any topic information more than default threshold Value, then pay close attention to topic using the topic as recommendation;According to the query message for recommending concern topic generation concern topic addition.
Exemplary, the device can also include:
Feedback unit, if closing a upper read interface for user, and there is no reading behavior to a upper read interface, then give birth to The feedback query message of Cheng Shangyi read interfaces.
Exemplary, the dialogue interactive module 320 can include:
It is intended to unit, is specifically used for:The dialogue interaction content of foundation user, determine the intention of user;Meaning according to user Figure, pays close attention to user interest, user topic or user pays close attention to author and carries out additions and deletions processing.
Exemplary, the dialogue interactive module 320 can also include:
Multi-scale, it is specifically used for:The dialogue interaction content of foundation user, determine the yardstick and/or style of user;Foundation The yardstick label and/or style label added in advance in information, determine the information of user's matching.
The information recommending apparatus based on dialogue interaction that the embodiment of the present invention is provided can perform any embodiment of the present invention The information recommendation method based on dialogue interaction provided, possesses the corresponding functional module of execution method and beneficial effect.
Example IV
Fig. 6 is the structural representation of the server in the embodiment of the present invention four.Fig. 6 is shown suitable for being used for realizing the present invention The block diagram of the exemplary servers 412 of embodiment.The server 412 that Fig. 6 is shown is only an example, should not be to the present invention The function and use range of embodiment bring any restrictions.
As shown in fig. 6, server 412 is showed in the form of universal computing device.The component of server 412 can include but It is not limited to:One or more processor 416, system storage 428, connection different system component (including system storage 428 With processor 416) bus 418.
Bus 418 represents the one or more in a few class bus structures, including memory bus or Memory Controller, Peripheral bus, graphics acceleration port, processor 416 or total using the local of any bus structures in a variety of bus structures Line.For example, these architectures include but is not limited to industry standard architecture (ISA) bus, MCA (MAC) bus, enhanced isa bus, VESA's (VESA) local bus and periphery component interconnection (PCI) are total Line.
Server 412 typically comprises various computing systems computer-readable recording medium.These media can be it is any being capable of bedding and clothing The usable medium that business device 412 accesses, including volatibility and non-volatile media, moveable and immovable medium.
System storage 428 can include the computer system readable media of form of volatile memory, such as deposit at random Access to memory (RAM) 430 and/or cache memory 432.Server 412 may further include it is other it is removable/can not Mobile, volatile/non-volatile computer system storage medium.Only as an example, storage system 434 can be used for read-write not Movably, non-volatile magnetic media (Fig. 6 is not shown, is commonly referred to as " hard disk drive ").Although not shown in Fig. 6, can with There is provided for the disc driver to may move non-volatile magnetic disk (such as " floppy disk ") read-write, and to removable non-volatile The CD drive of CD (such as CD-ROM, DVD-ROM or other optical mediums) read-write.In these cases, each driving Device can be connected by one or more data media interfaces with bus 418.Memory 428 can include at least one journey Sequence product, the program product have one group of (for example, at least one) program module, and these program modules are configured to perform this hair The function of bright each embodiment.
Program/utility 440 with one group of (at least one) program module 442, can be stored in such as memory In 428, such program module 442 includes but is not limited to operating system, one or more application program, other program modules And routine data, the realization of network environment may be included in each or certain combination in these examples.Program module 442 Generally perform the function and/or method in embodiment described in the invention.
Server 412 can also be with one or more external equipments 414 (such as keyboard, sensing equipment, display 424 etc.) Communication, can also enable a user to the equipment communication interacted with the server 412 with one or more, and/or with causing the clothes Any equipment (such as network interface card, modem etc.) that business device 412 can be communicated with one or more of the other computing device Communication.This communication can be carried out by input/output (I/O) interface 422.Also, server 412 can also pass through network Adapter 420 and one or more network (such as LAN (LAN), wide area network (WAN) and/or public network, such as because of spy Net) communication.As illustrated, network adapter 420 is communicated by bus 418 with other modules of server 412.It should be understood that Although not shown in the drawings, can combine server 412 uses other hardware and/or software module, include but is not limited to:Micro- generation Code, device driver, redundant processing unit, external disk drive array, RAID systems, tape drive and data backup Storage system etc..
Processor 416 is stored in program in system storage 428 by operation, so as to perform various function application and Data processing, such as the information recommendation method based on dialogue interaction that the embodiment of the present invention is provided is realized, this method includes:
According to the user behavior feature and/or user model of history read interface, theme query message is read in generation, described User model includes following at least one:User interest, user pay close attention to topic and user pays close attention to author;
Reading theme query message according to generation engages in the dialogue with user to be interacted;
The reading theme of the user is determined according to dialogue interaction content;
By the message push matched with the reading theme to the user.
Embodiment five
The embodiment of the present invention five additionally provides a kind of computer-readable recording medium, is stored thereon with computer program, should The information recommendation method based on dialogue interaction provided such as the embodiment of the present invention, this method are provided when program is executed by processor Including:
According to the user behavior feature and/or user model of history read interface, theme query message is read in generation, described User model includes following at least one:User interest, user pay close attention to topic and user pays close attention to author;
Reading theme query message according to generation engages in the dialogue with user to be interacted;
The reading theme of the user is determined according to dialogue interaction content;
By the message push matched with the reading theme to the user.
The computer-readable storage medium of the embodiment of the present invention, any of one or more computer-readable media can be used Combination.Computer-readable medium can be computer-readable signal media or computer-readable recording medium.It is computer-readable Storage medium for example may be-but not limited to-the system of electricity, magnetic, optical, electromagnetic, infrared ray or semiconductor, device or Device, or any combination above.The more specifically example (non exhaustive list) of computer-readable recording medium includes:Tool There are the electrical connections of one or more wires, portable computer diskette, hard disk, random access memory (RAM), read-only storage (ROM), erasable programmable read only memory (EPROM or flash memory), optical fiber, portable compact disc read-only storage (CD- ROM), light storage device, magnetic memory device or above-mentioned any appropriate combination.In this document, computer-readable storage Medium can be any includes or the tangible medium of storage program, the program can be commanded execution system, device or device Using or it is in connection.
Computer-readable signal media can include in a base band or as carrier wave a part propagation data-signal, Wherein carry computer-readable program code.The data-signal of this propagation can take various forms, including but unlimited In electromagnetic signal, optical signal or above-mentioned any appropriate combination.Computer-readable signal media can also be that computer can Any computer-readable medium beyond storage medium is read, the computer-readable medium, which can send, propagates or transmit, to be used for By instruction execution system, device either device use or program in connection.
The program code included on computer-readable medium can be transmitted with any appropriate medium, including --- but it is unlimited In wireless, electric wire, optical cable, RF etc., or above-mentioned any appropriate combination.
It can be write with one or more programming languages or its combination for performing the computer that operates of the present invention Program code, described program design language include object oriented program language-such as Java, Smalltalk, C++, Also include conventional procedural programming language-such as " C " language or similar programming language.Program code can be with Fully perform, partly perform on the user computer on the user computer, the software kit independent as one performs, portion Divide and partly perform or performed completely on remote computer or server on the remote computer on the user computer. Be related in the situation of remote computer, remote computer can pass through the network of any kind --- including LAN (LAN) or Wide area network (WAN)-be connected to subscriber computer, or, it may be connected to outer computer (such as carried using Internet service Pass through Internet connection for business).
Pay attention to, above are only presently preferred embodiments of the present invention and institute's application technology principle.It will be appreciated by those skilled in the art that The invention is not restricted to specific embodiment described here, can carry out for a person skilled in the art various obvious changes, Readjust and substitute without departing from protection scope of the present invention.Therefore, although being carried out by above example to the present invention It is described in further detail, but the present invention is not limited only to above example, without departing from the inventive concept, also Other more equivalent embodiments can be included, and the scope of the present invention is determined by scope of the appended claims.

Claims (15)

1. the information recommendation method based on dialogue interaction, it is characterised in that including:
According to the user behavior feature and/or user model of history read interface, theme query message, the user are read in generation Model includes following at least one:User interest, user pay close attention to topic and user pays close attention to author;
Reading theme query message according to generation engages in the dialogue with user to be interacted;
The reading theme of the user is determined according to dialogue interaction content;
By the message push matched with the reading theme to the user.
2. according to the method for claim 1, it is characterised in that the user behavior feature according to history read interface And/or theme query message is read in user model, generation, including:
According to the user behavior feature and/or user model of history read interface, the current scene class residing for the user is determined Type;
According to default scene type and the incidence relation between theme is read, by the reading master of the current scene type matching Topic is used as theme to be recommended;
According to the theme generation reading theme query message to be recommended.
3. according to the method for claim 1, it is characterised in that the user behavior feature according to history read interface And/or theme query message is read in user model, generation, in addition to:
According to the user behavior feature and/or user model of history read interface, the topic that the user currently pays close attention to is determined;
The query message for reading more new content is reminded in the update status generation for the topic currently paid close attention to according to the user.
4. according to the method for claim 3, it is characterised in that after the topic for determining the user and currently paying close attention to also Including:
User behavior feature according to history read interface, there is provided the user currently pays close attention to more information of topic for described Family selects;
User behavior feature according to history read interface, there is provided the information that the user currently pays close attention to the associated topic of topic supplies User's selection.
5. according to the method for claim 1, it is characterised in that the user behavior feature according to history read interface And/or user model, after theme query message is read in generation, in addition to:
According to reading theme query message generation candidate's information options for user selection.
6. according to the method for claim 1, it is characterised in that also include:
In user's closing after a read interface, if detecting, the frequency of any topic information of user's click is more than predetermined threshold value, Then topic is paid close attention to using the topic as recommendation;
According to the query message for recommending concern topic generation concern topic addition.
7. according to the method for claim 1, it is characterised in that also include:
If user closes a upper read interface, and does not have reading behavior to a upper read interface, then a upper read interface is generated Feed back query message.
8. according to the method for claim 1, it is characterised in that the reading theme query message and user according to generation Engage in the dialogue after interacting, in addition to:
The dialogue interaction content of foundation user, determine the intention of user;
According to the intention of user, pay close attention to user interest, user topic or user pays close attention to author and carries out additions and deletions processing.
9. according to the method for claim 1, it is characterised in that the reading theme query message and user according to generation Engage in the dialogue after interacting, in addition to:
The dialogue interaction content of foundation user, determine the yardstick and/or style of user;
According to the yardstick label and/or style label added in advance in information, the information that user matches is determined.
10. the information recommending apparatus based on dialogue interaction, it is characterised in that including:
Query message acquisition module, for the user behavior feature and/or user model according to history read interface, generation is read Theme query message, the user model include following at least one:User interest, user pay close attention to topic and user pays close attention to and made Person;
Talk with interactive module, interacted for being engaged in the dialogue according to the reading theme query message of generation with user;
Topic module is read, for determining the reading theme of the user according to dialogue interaction content;
Pushing module, for will be with the message push that matches of reading theme to the user.
11. device according to claim 10, it is characterised in that the query message acquisition module includes scene type list Member, the scene type unit, is specifically used for:
According to the user behavior feature and/or user model of history read interface, the current scene class residing for the user is determined Type;
According to default scene type and the incidence relation between theme is read, by the reading master of the current scene type matching Topic is used as theme to be recommended;
According to the theme generation reading theme query message to be recommended.
12. device according to claim 10, it is characterised in that the dialogue interactive module also includes:
It is intended to unit, is specifically used for:
The dialogue interaction content of foundation user, determine the intention of user;
According to the intention of user, pay close attention to user interest, user topic or user pays close attention to author and carries out additions and deletions processing.
13. device according to claim 10, it is characterised in that the dialogue interactive module also includes:
Multi-scale, it is specifically used for:
The dialogue interaction content of foundation user, determine the yardstick and/or style of user;
According to the yardstick label and/or style label added in advance in information, the information that user matches is determined.
14. a kind of server, it is characterised in that the server includes:
One or more processors;
Storage device, for storing one or more programs;
When one or more of programs are by one or more of computing devices so that one or more of processors are real The now information recommendation method based on dialogue interaction as described in any in claim 1-9.
15. a kind of computer-readable recording medium, is stored thereon with computer program, it is characterised in that the program is by processor The information recommendation method based on dialogue interaction as described in any in claim 1-9 is realized during execution.
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