CN106021377A - Information processing method and device implemented by computer - Google Patents

Information processing method and device implemented by computer Download PDF

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CN106021377A
CN106021377A CN201610310902.4A CN201610310902A CN106021377A CN 106021377 A CN106021377 A CN 106021377A CN 201610310902 A CN201610310902 A CN 201610310902A CN 106021377 A CN106021377 A CN 106021377A
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evaluation
evaluation object
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knowledge graph
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单忆南
K·拉加塞图帕蒂
程书欣
毕鹏
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Shanghai Point Information Technology Co Ltd
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Shanghai Rong Rong Financial Information Service Co Ltd
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Abstract

The invention provides an information processing method and device implemented by a computer. The method comprises the following steps: acquiring data of a plurality of training evaluation objects, constructing a knowledge map, and creating a map database based on the knowledge map, wherein nodes of the knowledge map are evaluation objects or association objects having an association relation with the evaluation objects, and sides of the knowledge map describe the relation between the nodes and have corresponding weights; calculating feature vectors of the training evaluation objects based on the distances between the training evaluation objects, wherein the distance is at least based on a path weight between the training evaluation objects, and the feature vectors indicate the number of other training evaluation objects in the map databases with different dimensions within a certain distance for the training evaluation objects; using the feature vectors and the evaluation categories of the plurality of training evaluation objects as a sample set, and creating an evaluation module; responding to received data of a new evaluation object, calculating the feature vector and an evaluation index of the new evaluation object; and completing an audit operation of the new evaluation object by the computer according to discrimination conditions based on the evaluation index.

Description

Computer implemented information processing method and device
Technical field
It relates to computer information processing field, particularly relate to computer implemented object credibility evaluation method and Device.
Background technology
At present, personal information is audited and in the applied environment of reliability assessment, such as in social safety needing Field, financial security field etc., generally by carrying out individual for personal information, Identity Association information, consumer sale information etc. Portrait, sets up based on statistical machine learning mathematical model, and then carries out Analysis on confidence.
Along with appearance and the rise of social networks of the Internet, just createing for individual now than ever in our society The information whenever can created in history will how information, there is between data extremely complex and countless ties contact. But, when utilizing the data model of machine learning, people lack the deep excavation to personal data, the application to data simultaneously The most limited, thus have impact on individual or the accuracy of the reliability assessment of individual behavior.
Summary of the invention
In order to solve problem suggested above, the disclosure provides a kind of deep exploitation individual's related data to pass through mathematics Model carries out the computer implemented technical scheme of information processing.
First aspect according to the disclosure, it is provided that a kind of computer implemented information processing method, method includes: acquisition is many The related data of individual Training valuation object, build knowledge graph, and create the chart database of knowledge based figure, wherein knowledge graph Each node is evaluation object or has the affiliated partner of incidence relation with evaluation object, the limit Description of Knowledge figure of knowledge graph Relation between node and there is respective weights;Based on the distance between Training valuation object, calculate each Training valuation pair The characteristic vector of elephant, wherein distance is at least based on the path weight value between Training valuation object, and characteristic vector is for each training Evaluation object instruction quantity of other Training valuation objects in the chart database of different dimensions in a certain distance;By feature to The assessment categories of amount and multiple Training valuation objects is as sample set, to build assessment models;In response to receiving new assessment The related data of object, calculates the characteristic vector of new evaluation object;Feature based on assessment models and new evaluation object to Amount, calculates the evaluation index of new evaluation object;And evaluation index of based on new evaluation object, by computer according to differentiation Condition completes the review operations about new evaluation object.
According to embodiment of the disclosure, wherein the distance between Training valuation object is calculated according to following formula:
D ( x i , x j ) = L ( max l = 1 , 2 , ... , L I l ( h x i , x j , ω x i , x j ) )
Wherein xi、xjRepresent the i-th Training valuation object and jth Training valuation object, D (x respectivelyi,xj) represent xiAnd xjBetween away from From,Represent xiAnd xjNode on the l of path, L represents xiAnd xjBetween the number in path,Represent xiAnd xjPath l The weight of top;For the factor of influence of path l, Represent the maximum path of factor of influence the interstitial content of process.
According to embodiment of the disclosure, wherein based on the distance between Training valuation object, calculate each Training valuation pair The characteristic vector of elephant includes: for each property value of the particular community of Training valuation object, statistical distance D (xi,xjIt is less than in) The number of paths of specific range threshold value;And based on the number of paths added up, obtain the characteristic vector of Training valuation object.
According to embodiment of the disclosure, wherein in response to receiving the related data of new evaluation object, calculate new assessment The characteristic vector of object includes: projected in knowledge graph by the related data of new evaluation object;Based on new evaluation object with The path weight value between other evaluation objects in knowledge graph, calculate between new evaluation object and other evaluation objects away from From;And based on the distance between new evaluation object and other evaluation objects, calculate the characteristic vector of new evaluation object.
According to embodiment of the disclosure, wherein assessment models include following in one or more: decision tree, logistic regression Model, Random Forest model.
According to embodiment of the disclosure, also include updating chart database and assessment models.
According to embodiment of the disclosure, also include: multiple new evaluation objects and corresponding assessment categories are updated and know Know in figure;Based on the knowledge graph after updating and chart database, generate new assessment models;Determine the accurate of new assessment models Degree;And accuracy of based on new assessment models, update assessment models.
According to embodiment of the disclosure, wherein the node of figure has the affiliated partner bag of incidence relation with evaluation object Include in following item is one or more: the personal data object that evaluation object is associated;The collage-credit data that evaluation object is associated Object;The social relations data object that evaluation object is associated;The social network data object that evaluation object is associated;It is right to assess As the communication data object being associated.
According to embodiment of the disclosure, wherein the weight on the limit in figure at least based in following item one or more come really Fixed: the relationship type of the node associated by limit;The correlation degree between node associated by limit.
Second aspect according to the disclosure, it is provided that a kind of computer implemented information processor, device includes: diagram data Storehouse creates device, is configured to obtain the related data of multiple Training valuation object, builds knowledge graph, and creates knowledge based The chart database of figure, wherein each node of knowledge graph is evaluation object or have associating of incidence relation with evaluation object right As, relation between the node of the limit Description of Knowledge figure of knowledge graph and have respective weights;First calculates device, is configured to Based on the distance between Training valuation object, calculating the characteristic vector of each Training valuation object, wherein distance is at least based on instruction Practicing the path weight value between evaluation object, characteristic vector is for each Training valuation object instruction different dimensional in a certain distance The quantity of other Training valuation objects in the chart database of degree;Assessment models construction device, is configured to characteristic vector with many The assessment categories of individual Training valuation object is as sample set, to build assessment models;Second calculates device, is configured to respond to In receiving the related data of new evaluation object, calculate the characteristic vector of new evaluation object;And based on assessment models with new The characteristic vector of evaluation object, calculate the evaluation index of new evaluation object;And examination & verification processing means, be configured to based on The evaluation index of new evaluation object, is completed the review operations about new evaluation object by computer according to criterion.
According to embodiment of the disclosure, wherein the distance between Training valuation object is calculated according to following formula:
D ( x i , x j ) = L ( max l = 1 , 2 , ... , L I l ( h x i , x j , ω x i , x j ) )
Wherein xi、xjRepresent the i-th Training valuation object and jth Training valuation object, D (x respectivelyi,xj) represent xiAnd xjBetween away from From,Represent xiAnd xjNode on the l of path, L represents xiAnd xjBetween the number in path,Represent xiAnd xjPath l The weight of top;For the factor of influence of path l, Represent the maximum path of factor of influence the interstitial content of process.
According to embodiment of the disclosure, first calculates device is also configured to the particular community for Training valuation object Each property value, statistical distance D (xi,xjLess than the number of paths of specific range threshold value in);And based on the number of path added up Amount, obtains the characteristic vector of Training valuation object.
According to embodiment of the disclosure, second calculates device is also configured to throw the related data of new evaluation object It is mapped in knowledge graph;Based on the path weight value between other evaluation objects in new evaluation object and knowledge graph, calculate new Distance between evaluation object and other evaluation objects;And based between new evaluation object and other evaluation objects away from From, calculate the characteristic vector of new evaluation object.
According to embodiment of the disclosure, wherein assessment models include following in one or more: decision tree, logistic regression Model, Random Forest model.
According to embodiment of the disclosure, also include updating device, be configured to update chart database and assessment models.
According to embodiment of the disclosure, updating device is also configured to multiple new evaluation objects and corresponding assessment Classification updates in knowledge graph;Based on the knowledge graph after updating and chart database, generate new assessment models;Determine new assessment The accuracy of model;And accuracy of based on new assessment models, update assessment models.
According to embodiment of the disclosure, wherein the node of figure has the affiliated partner bag of incidence relation with evaluation object Include in following item is one or more: the personal data object that evaluation object is associated;The collage-credit data that evaluation object is associated Object;The social relations data object that evaluation object is associated;The social network data object that evaluation object is associated;It is right to assess As the communication data object being associated.
According to embodiment of the disclosure, wherein the weight on the limit in figure at least based in following item one or more come really Fixed: the relationship type of the node associated by limit;The correlation degree between node associated by limit.
The disclosure sets up assessment models by having the knowledge graph of radiation feature, by data by one-dimensional characteristic vector exhibition Open as model based on figure relation, and data are converted into machine are appreciated that data mode, utilize computer to realize data message Process, take full advantage of the advantage of data mining and machine learning.
Accompanying drawing explanation
In conjunction with accompanying drawing and with reference to described further below, the feature of the presently disclosed embodiments, advantage and other aspects will become Must become apparent from, existing by only by example, nonrestrictive mode shows some embodiments of the disclosure, in the accompanying drawings:
Fig. 1 shows and processes block diagram according to the schematic information that embodiment of the disclosure;
Fig. 2 shows according to the method flow diagram that embodiment of the disclosure;
Fig. 3 shows according to the example knowledge graph that embodiment of the disclosure;And
Fig. 4 shows according to the device schematic diagram that embodiment of the disclosure.
Detailed description of the invention
Each exemplary embodiment of the disclosure is described in detail below with reference to accompanying drawing.Flow chart and block diagram in accompanying drawing illustrate Architectural framework in the cards, function and the operation of the method and system of the various embodiments according to the disclosure.It should be noted that, Each square frame in flow chart or block diagram can represent a module, program segment or a part for code, described module, program Section or the part of code can include one or more for realizing holding of the logic function of defined in each embodiment Row instruction.It should also be noted that in some realization alternately, the function marked in square frame can also be attached according to being different from The order marked in figure occurs.Such as, two square frames succeedingly represented can essentially perform substantially in parallel, or it Sometimes can also perform in a reverse order, this depends on involved function.It should also be noted that flow chart And/or the combination of the square frame in each square frame in block diagram and flow chart and/or block diagram, it is possible to use perform the merit of regulation The special hardware based system that can or operate realizes, or specialized hardware can be used to come with the combination of computer instruction Realize.
Term as used herein " includes ", " comprising " and similar terms are understood to the term of opening, i.e. " include/including but not limited to ", expression can also include other guide.Term "based" is " being based at least partially on ".Term " embodiment " expression " at least one embodiment ";Term " another embodiment " expression " at least one further embodiment ".
As it was previously stated, the disclosure is intended to deep excavation information data based on incidence relation, utilize the radiation relation of information Feature, and then it is based on statistical model to individual or the reliability assessment of individual behavior to use computer to realize.Computer realizes Statistical model algorithm (i.e. machine learning algorithm) be that a class automatically analyzes from data and obtains rule, and assimilated equations is to the unknown The algorithm that data are predicted.In this article, term " assessment models " is mathematical model based on statistics, and it can be used for commenting Estimate object to be estimated.Term " evaluation object " for the needs determined according to various different application scenes be estimated right As, such as individual or individual behavior, in an embodiment of the disclosure, evaluation object can be the loaning bill needing to carry out auditing Or loan, in another embodiment, evaluation object can be the personal information needing examination & verification.Term " characteristic vector " represents basis The characteristic information extracted from sample (such as, evaluation object) and the multi-C vector built, the dimension of vector is equal to characteristic information The number of type.
It is appreciated that these exemplary embodiments described below merely to enable those skilled in the art the most geographical Solve and realize embodiment of the disclosure, and limiting the scope of the present disclosure the most by any way.
Fig. 1 shows schematic information processing block Figure 100 of an embodiment according to the disclosure.It it is noted that these public affairs The information processing solution that dispersing and elevation goes out does not limits concrete application scenarios, it will be understood by those skilled in the art that at needs Client or user profile or client or user behavior information are analyzed in the control environment processed, embodiment of the disclosure All can be applied.
Figure 1 illustrates the data carried out by making full use of the relatedness of data to process and assessment models foundation Process.Fig. 1 shows the aspect that data source or data relate to: user data 101, the Internet public data 102, historical data 103, these data can be stored in one or more data base.Generally, the number that user data 101 provides for user self According to, such as age, education degree, working condition, family background, communication data etc..The Internet public data 102 is in social activity Disclosed, any data can checked per capita, such as social network data, web data etc. in network.Historical data 103 is Apply the mechanism of this programme or the historical relevance data that system is known, such as, in the scene of financial institution, can be consumption Data, bank data, collage-credit data etc., and in the scene of search application, can be the historical search data etc. of user. Fig. 1 has been diagrammatically only by the aspect that data may relate to, it is possible to understand that, it is possible to make full use of the potential data aspect of the relatedness of data The most within the scope of the present disclosure.
Data extraction process 104 can such as gather various data source, and data source can include such as user data 101, mutually Networking public data 102, historical data 103 etc., extraction wherein can data, to form chart database based on figure relation 105, and and then generate training data 107.Therefore, in data extraction process 104, to training object and the pass that is mutually related thereof Connection object and related data carry out deep discovery and excavation.These training objects and the affiliated partner formation figure that is mutually related close The node of system, each node is identified by a globally unique ID and is indexed, and node has several attributes simultaneously, to describe The characteristic of node.Such as, when node is individual, its attribute can be name, identification card number, home address etc.;At node During for object for sale, its attribute can be to sell type, sell amount of money etc.;When node is phone, its attribute can be electricity Call type, telephone number, institute possession etc..And the relation between these nodes is described by the limit of figure, e.g. is-a closes System, represents that a node is the one of another node, or has-a relation, represents that a node has another node etc. Deng, such relation is all used to describe the incidence relation between entity.Meanwhile, this relation needs to be converted into machine and can manage The expression solved, uses the weight on limit to characterize correlation degree in an embodiment of the disclosure.
Chart database 105 stores various data based on figure relation, such as, node as above, node ID, genus Property, limit, the relation on limit, weight etc..Information processing system can utilize computer to carry out various to the data in chart database Process, such as based on figure relation traversal, add up, search, renewal etc..
Data in chart database 105 are analyzed, extract and process by relation analysis and extraction process 106, to be formed Training data 107.According to the training data of required acquisition, based on chart database is trained the various incidence relations of object, carry Take out the characteristic vector of training object, and training object is carried out label, be input to assessment models as sample data and trained Journey 108, finally gives assessment models 109.
In assessment models training process 108, the sample of the label chosen is divided into training set and test set, such as Can be using the 75% of sample as training set, the 25% of sample is as test set.The sample data of training set is inputted statistics mould In type, building statistical model, such as statistical model is that GBDT (Gradient Boost Decision Tree) model, logic are returned Return model etc., and continuous iteration sample in the process, until training terminates.The statistics afterwards test sample input built Model, carries out test checking and can adjust the parameter of statistical model, is finally completed assessment models training process 108, is commented Estimate model 109.When there being new evaluation object to need to be estimated, pass through the data analysis to this new evaluation object and extraction, Its characteristic vector is inputted assessment models 109, to be calculated its evaluation index.
It is described in detail below in conjunction with specific embodiment technical scheme of this disclosure.Fig. 2 shows according to these public affairs The flow chart of the method 200 of the embodiment opened.In step 202, obtain the related data of multiple Training valuation object, build Knowledge graph, and create the chart database of knowledge based figure, wherein each node of knowledge graph be evaluation object or with assessment Object has the affiliated partner of incidence relation, relation between the node of the limit Description of Knowledge figure of knowledge graph and have corresponding power Weight.
For the ease of the purpose understood, in a specific embodiment, such as, for personal credit's scene, node definition shows Anticipate as shown in the table.
Table 1
As shown in table 1, in such scene, node can be evaluation object (such as loan) or evaluation object is correlated with The affiliated partner (such as bank card, loan distribution person, Email etc.) of connection, it addition, as seen from Table 1, each node has Several attributes corresponding.Based on several evaluation objects and the affiliated partner that is associated thereof, build knowledge graph, in such field Jing Zhong, the limit of figure such as can be as shown in table 2.
Table 2
As shown in table 2, based on the relation between the node described by limit and the type of associated nodes, can be that each limit is divided Joining corresponding weighted value, this weighted value characterizes the correlation degree between node, or in different application scene, characterize for The influence degree of the object of needs assessment, it is quantificational expression.For example, between the object if desired assessed by man and wife, The relation such as colleague connects, then this contact generally can have the higher power that interacts, can be allocated one higher Weighted value;If being connected by such as examination & approval behavior, i.e. one approver has examined two objects, and this contact is generally of relatively low The power that interacts, a relatively low weighted value can be allocated.
According to the node extracted from data source and the related data on limit, knowledge graph model can be built.A concrete reality Execute in example, construct knowledge graph signal 300 as shown in Figure 3.As it is shown on figure 3, have the incidence relation of complexity between each node, Such as, for node 301 (loan 2), it has direct correlation with node 302 (borrower 2), node 303 (loan distribution person 1) Relation, the node 305 (borrower 1) simultaneously associated with node 302 (borrower 2), node 306 (father), node 307 (hands Machine), node 308 (Email), node 309 (company) etc. there is nearer indirect association relation, with node 304 (loan 3), Phone that node 306 (father) has, company work other people etc. there is indirect association relation farther out.It is true that In different application scene, the relation aspect of concern is different, can build applicable application scenarios, the most illustrated in Figure 3 Knowledge graph.
Knowledge graph model is stored in chart database 105, can the most such as matrix, adjacency list, chained list etc. Store, be convenient to the operation such as graph traversal and search.Building of knowledge graph (or the chart database) being appreciated that in the disclosure Vertical, it is provided that a kind of to utilize the solution of relation radiation characteristic between data, to be preferably applied for assessment or the field of prediction Scape.
Return to the method 200 shown in Fig. 2, after establishing chart database 105, in step 204, based on Training valuation Distance between object, calculates the characteristic vector of each Training valuation object, and wherein this distance is at least based on Training valuation object Between path weight value, characteristic vector for each Training valuation object instruction in a certain distance the diagram data of different dimensions The quantity of other Training valuation objects in storehouse.
In order to make it easy to understand, still as a example by Fig. 3, node 302 (borrower 2) and node 305 (borrower 1) SEPARATE APPLICATION The loan represented with node 301 (loan 2) and node 310 (provide a loan 1), from this exemplary plot it can be seen that node 310 is in Bad credit state, and node 302 (borrower 2) and node 305 (borrower 1) have linked character close together, that weight is higher, In this case, node 301 (loan 2) have greatly may probability have high can not reliability.In order to reach distinguish and The target of quantitative evaluation, in an embodiment of the disclosure, by calculating " distance " between evaluation object, by evaluation object Characteristic vector pickup be the quantity of other evaluation objects in the chart database of different dimensions in a certain distance, and then can Distinguish the assessment categories of evaluation object.Therefore, this distance can characterize with associate that impact is big, there is insincere (or credible) because of These objects of the distance of " closely " between the object of element, it should assign to significant assessment categories.
In a specific embodiment of the disclosure, two evaluation object xi、xjBetween distance D (xi,xj) can basis Following formula is calculated:
WhereinRepresent xiAnd xjNode on the l of path, L represents xiAnd xjBetween the number in path,Represent xiAnd xj The weight of l top, path;For the factor of influence of path l, Represent the maximum path of factor of influence the interstitial content of process.
That is, obtain evaluation object distance between any two according to formula (1), this distance is all roads between evaluation object The path that in footpath, factor of influence is maximum the interstitial content of process.Based on this distance, for each evaluation object, can be according to need Attribute to be assessed, selects suitable radiation level, obtains the characteristic vector for mathematical model.
In a specific embodiment of the disclosure, such as in personal credit's application scenarios, in order to evaluation object (example Such as loan) extract characteristic vector, according to node as shown in table 1 and nodal community example, evaluation object (such as can be borrowed Money) the property value (the most various state) of attribute (such as loan status) do such as the definition of table 3, as shown in table 3, evaluation object Particular community have 6 property values.
Table 3
Loan status Identifier
Apply for applying
Refund current
Close complete
Exceed the time limit less than 30 days M1
Exceed the time limit more than 30 days, less than 90 days M2M3
Bad credit default
Therefore, it can for evaluation object xi, statistical distance less than certain distance threshold value Dis quantity as feature to Amount, i.e.
cntJ=1,2 ..., N(D(xi,xj) < Dis) (formula 2)
Wherein N represents N number of property value of particular community of evaluation object.Evaluation object x is obtained according to formula (2)iN-dimensional special Levy vector
Characteristic vectorFor each evaluation object instruction in a certain distance in the chart database of different dimensions other The quantity of evaluation object.
When during the training of statistical model, the distance between Training valuation object can be calculated in the manner described above And obtain the characteristic vector of Training valuation object.After assessment models creates, for new evaluation object, it is also possible to according to Aforesaid way calculates the distance between new evaluation object and other evaluation objects, and obtain the feature of new evaluation object to Amount.
It is appreciated that the calculating of distance described above and the acquisition of characteristic vector, in concrete computer realizes, can To use depth-first traversal based on figure and/or breadth first traversal, calculate the interstitial content meeting radiation condition.
Turn again to Fig. 2.It follows that method 200 proceeds to step 206, by characteristic vector and multiple Training valuation object Assessment categories as sample set, to build assessment models.Such as the description above in relation to Fig. 1, assessment models can be according to answering Select suitable mathematical model by scene, in a specific embodiment of the disclosure, GBDT model can be used.GBDT model (or GBDT algorithm) calculating each time is the residual error in order to reduce last calculating, and in order to eliminate residual error, can be in residual error A new model is set up on the gradient direction reduced.It is to say, in GBDT algorithm, the foundation of each new model be for Before making, the residual error of model reduces toward gradient direction.
Such as, for GBDT model, for evaluation object xi, its N kind probability distribution over states be probability distribution over states be F1 (x),F2(x),…,FnX (), result is that to belong to the probability of classification k be pk(x).Logistic conversion is as follows:
Result after Logistic is converted, loss function is:
Wherein, ykThe estimated value of the sample data for inputting, as a sample xiWhen belonging to classification k, yk=1, otherwise yk= 0。
Formula (4) is brought into loss function formula (5), and to its derivation, the gradient of loss function can be obtained,
For a sample, optimal gradient is the gradient closer to 0.It is trained drawing assessment mould by above formula Type.The concrete training process such as description above in association with Fig. 1, is divided into training set and test by the sample of the label chosen Collection, such as, as test set, can input the 75% of sample the sample data of training set as training set, the 25% of sample In statistical model, build statistical model, and continuous iteration sample in the process, until training terminates.Afterwards by test sample The statistical model that input builds, carries out test checking and can adjust the parameter of statistical model, being finally completed assessment models training Process 108, obtains assessment models 109.
The statistical model being appreciated that in embodiment of the disclosure is not limited to GBDT model, it would however also be possible to employ such as its His decision-tree model, Logic Regression Models, Random Forest model etc..
After constructing assessment models, method 200 proceeds to step 208, in response to receiving the relevant of new evaluation object Data, calculate the characteristic vector of new evaluation object.In this step, according to a specific embodiment of the disclosure, needs are worked as To new evaluation object xnewWhen being predicted or assess, in response to receiving new evaluation object xnewRelated data, by this A little data projection are in the knowledge graph built, to form the graph structure associated by new evaluation object.Afterwards, can be according to formula (1), formula (2) and formula (3) calculate new evaluation object xnewCharacteristic vector
In step 210, based on assessment models and the characteristic vector of new evaluation object, calculate the assessment of new evaluation object Index.In an embodiment of the disclosure, can be by the GBDT model prediction built or evaluate evaluation index p (xnew), p (xnew) value the highest then represent credibility the lowest.
In step 212, evaluation index based on new evaluation object, computer complete about new according to criterion The review operations of evaluation object.In this step, computer is according to the criterion preset, such as threshold value (such as Pthreshold、 PhighAnd/or PlowDeng) condition, as evaluation index p (xnew)>PhighShowing that credibility is the highest, computer is refused automatically, i.e. audits Do not pass through;p(xnew)<PlowShowing with a high credibility, computer accepts automatically, i.e. examination & verification is passed through;Plow<p(xnew)<PhighTime, can Add in the way of other auditing standardses or get involved manual examination and verification etc. using.
It may be noted that after new evaluation object is made examination & verification, new evaluation object can be removed from knowledge graph, To ensure the stability of assessment models.In order to preferably provide prediction or assessment result, can comment with on-line study and renewal Estimate model.After assessment models is disposed, such as, can periodically new data and result be updated in knowledge graph model, by In the increase of data dimension, model can learn to new feature and be used, to improve its predictablity rate.Data are more Newly, train and test and terminate after, contrast the accuracy of new assessment models and existing assessment models, and if only if, and new model is accurate Really rate just disposes new assessment models when improving, and otherwise waits for lower whorl learning training process.
According to embodiment of the disclosure, also provide for a kind of computer implemented information processor 400.As shown in Figure 4, dress Put 400 to include: chart database creates device 401, be configured to obtain the related data of multiple Training valuation object, build knowledge Figure, and create the chart database of knowledge based figure, wherein each node of knowledge graph is evaluation object or and evaluation object There is the affiliated partner of incidence relation, relation between the node of the limit Description of Knowledge figure of knowledge graph and there is respective weights; First calculates device 402, the distance between being configured to based on Training valuation object, calculates the feature of each Training valuation object Vector, wherein distance is at least based on the path weight value between Training valuation object, and characteristic vector is for each Training valuation object Instruction quantity of other Training valuation objects in the chart database of different dimensions in a certain distance;Assessment models construction device 403, it is configured to the assessment categories of characteristic vector and multiple Training valuation object as sample set, to build assessment mould Type;Second calculates device 404, is configured to respond to receive the related data of new evaluation object, calculates new evaluation object Characteristic vector;And based on assessment models and the characteristic vector of new evaluation object, the assessment calculating new evaluation object refers to Mark;And examination & verification processing means 405, it is configured to evaluation index based on new evaluation object, by computer according to differentiating bar Part completes the review operations about new evaluation object.
According to embodiment of the disclosure, wherein the distance between Training valuation object can be calculated according to following formula:
D ( x i , x j ) = L ( max l = 1 , 2 , ... , L I l ( h x i , x j , &omega; x i , x j ) )
Wherein xi、xjRepresent the i-th Training valuation object and jth Training valuation object, D (x respectivelyi,xj) represent xiAnd xjBetween away from From,Represent xiAnd xjNode on the l of path, L represents xiAnd xjBetween the number in path,Represent xiAnd xjPath l The weight of top;For the factor of influence of path l, Represent the maximum path of factor of influence the interstitial content of process.
According to embodiment of the disclosure, first calculates device 402 is also configured to the specified genus for Training valuation object Each property value of property, statistical distance D (xi,xjLess than the number of paths of specific range threshold value in);And based on the path added up Quantity, obtains the characteristic vector of Training valuation object.
According to embodiment of the disclosure, second calculates device 404 is also configured to the related data of new evaluation object Project in knowledge graph;Based on the path weight value between other evaluation objects in new evaluation object and knowledge graph, calculate new Evaluation object and other evaluation objects between distance;And based between new evaluation object and other evaluation objects away from From, calculate the characteristic vector of new evaluation object.
According to embodiment of the disclosure, wherein assessment models include following in one or more: decision tree, logistic regression Model, Random Forest model.
According to embodiment of the disclosure, also include updating device 406, be configured to update chart database and assessment models.
According to embodiment of the disclosure, updating device 406 is also configured to multiple new evaluation objects and comments accordingly Estimate classification to update in knowledge graph;Based on the knowledge graph after updating and chart database, generate new assessment models;Determine new commenting Estimate the accuracy of model;And accuracy of based on new assessment models, update assessment models.
According to embodiment of the disclosure, wherein the node of figure has the affiliated partner bag of incidence relation with evaluation object Include in following item is one or more: the personal data object that evaluation object is associated;The collage-credit data that evaluation object is associated Object;The social relations data object that evaluation object is associated;The social network data object that evaluation object is associated;It is right to assess As the communication data object being associated.
According to embodiment of the disclosure, wherein the weight on the limit in figure at least based in following item one or more come really Fixed: the relationship type of the node associated by limit;The correlation degree between node associated by limit.
By the teaching gone out given in above description and relevant drawings, many modification of the disclosure described herein Will be appreciated by disclosure those skilled in the relevant art with other embodiment.Therefore, the it being understood that disclosure Embodiment is not limited to disclosed detailed description of the invention, and modification and other embodiment are intended to be included in this Within scope of disclosure.Although additionally, above description and relevant drawings are in some example combination form of parts and/or function Under background, example embodiment is described, it will be appreciated that, parts can be provided by alternate embodiment And/or the different combinations of function are without departing from the scope of the present disclosure.On this point, such as, with explicitly described above Different parts and/or other combining form of function be also expected within being in the scope of the present disclosure.Although here Have employed concrete term, but they only are not intended to limit so that general and illustrative implication uses.

Claims (18)

1. a computer implemented information processing method, described method includes:
Obtain the related data of multiple Training valuation object, build knowledge graph, and create diagram data based on described knowledge graph Storehouse, each node of wherein said knowledge graph is evaluation object or to have associating of incidence relation with described evaluation object right As, the limit of described knowledge graph describes the relation between the described node of described knowledge graph and has respective weights;
Based on the distance between described Training valuation object, calculate the characteristic vector of each Training valuation object, wherein said away from From at least based on the path weight value between described Training valuation object, described characteristic vector is for each described Training valuation object Instruction quantity of other Training valuation objects in the described chart database of different dimensions in a certain distance;
Using the assessment categories of described characteristic vector and the plurality of Training valuation object as sample set, to build assessment mould Type;
In response to receiving the related data of new evaluation object, calculate the characteristic vector of described new evaluation object;
Based on described assessment models and the described characteristic vector of described new evaluation object, calculate commenting of described new evaluation object Estimate index;And
Described evaluation index based on described new evaluation object, by described computer according to criterion complete about described newly The review operations of evaluation object.
Method the most according to claim 1, the distance between wherein said Training valuation object is calculated according to following formula:
D ( x i , x j ) = L ( m a x l = 1 , 2 , ... , L I l ( h x i , x j , &omega; x i , x j ) )
Wherein xi、xjRepresent the i-th Training valuation object and jth Training valuation object, D (x respectivelyi,xj) represent xiAnd xjBetween distance,Represent xiAnd xjNode on the l of path, L represents xiAnd xjBetween the number in path,Represent xiAnd xjPath l on institute State the weight on limit;For the factor of influence of path l, Represent the maximum path of factor of influence the interstitial content of process.
Method the most according to claim 2, wherein based on the distance between described Training valuation object, calculates each training The characteristic vector of evaluation object includes:
For each property value of the particular community of described Training valuation object, add up described distance D (xi,xjLess than specific in) The number of paths of distance threshold;And
Described number of paths based on statistics, obtains the characteristic vector of described Training valuation object.
Method the most according to claim 1, wherein in response to receiving the related data of new evaluation object, calculate described newly The characteristic vector of evaluation object include:
The related data of described new evaluation object is projected in described knowledge graph;
Based on the path weight value between other evaluation objects in described new evaluation object and described knowledge graph, calculate described newly Evaluation object and other evaluation objects described between distance;And
Based on the distance between described new evaluation object and other evaluation objects described, calculate the spy of described new evaluation object Levy vector.
Method the most according to claim 1, wherein said assessment models include following in one or more: decision tree, Logic Regression Models, Random Forest model.
Method the most according to claim 1, also includes: update described chart database and described assessment models.
Method the most according to claim 6, also includes:
Multiple described new evaluation objects and corresponding assessment categories are updated in described knowledge graph;
Based on the described knowledge graph after updating and chart database, generate new assessment models;
Determine the accuracy of described new assessment models;And
Described accuracy based on described new assessment models, updates described assessment models.
Method the most according to claim 1, has incidence relation with described evaluation object in the node of wherein said figure Affiliated partner include in following item one or more: the personal data object that evaluation object is associated;Evaluation object is correlated with The collage-credit data object of connection;The social relations data object that evaluation object is associated;The social networks number that evaluation object is associated According to object;The communication data object that evaluation object is associated.
Method the most according to claim 1, the weight on the described limit in wherein said figure is at least based in following item Or multinomial determine: the relationship type of the node associated by described limit;The correlation degree between node associated by described limit.
10. a computer implemented information processor, described device includes:
Chart database creates device, is configured to obtain the related data of multiple Training valuation object, builds knowledge graph, and creates Building chart database based on described knowledge graph, each node of wherein said knowledge graph is evaluation object or right with described assessment As having the affiliated partner of incidence relation, the limit of described knowledge graph describe the relation between the described node of described knowledge graph and There is respective weights;
First calculates device, the distance between being configured to based on described Training valuation object, calculates each Training valuation object Characteristic vector, wherein said distance is at least based on the path weight value between described Training valuation object, described characteristic vector pin To each described Training valuation object instruction other Training valuation in the described chart database of different dimensions in a certain distance The quantity of object;
Assessment models construction device, is configured to make the assessment categories of described characteristic vector and the plurality of Training valuation object For sample set, to build assessment models;
Second calculates device, is configured to respond to receive the related data of new evaluation object, calculates described new assessment right The characteristic vector of elephant;And based on described assessment models and the described characteristic vector of described new evaluation object, calculate described newly The evaluation index of evaluation object;And
Examination & verification processing means, be configured to described evaluation index based on described new evaluation object, by described computer according to Criterion completes the review operations about described new evaluation object.
11. devices according to claim 10, the distance between wherein said Training valuation object calculates according to following formula Arrive:
D ( x i , x j ) = L ( m a x l = 1 , 2 , ... , L I l ( h x i , x j , &omega; x i , x j ) )
Wherein xi、xjRepresent the i-th Training valuation object and jth Training valuation object, D (x respectivelyi,xj) represent xiAnd xjBetween distance,Represent xiAnd xjNode on the l of path, L represents xiAnd xjBetween the number in path,Represent xiAnd xjPath l on institute State the weight on limit;For the factor of influence of path l, Represent the maximum path of factor of influence the interstitial content of process.
12. devices according to claim 11, described first calculates device is also configured to
For each property value of the particular community of described Training valuation object, add up described distance D (xi,xjLess than specific in) The number of paths of distance threshold;And
Described number of paths based on statistics, obtains the characteristic vector of described Training valuation object.
13. devices according to claim 10, described second calculates device is also configured to
The related data of described new evaluation object is projected in described knowledge graph;
Based on the path weight value between other evaluation objects in described new evaluation object and described knowledge graph, calculate described newly Evaluation object and other evaluation objects described between distance;And
Based on the distance between described new evaluation object and other evaluation objects described, calculate the spy of described new evaluation object Levy vector.
14. devices according to claim 10, wherein said assessment models include following in one or more: decision-making Tree, Logic Regression Models, Random Forest model.
15. devices according to claim 10, also include updating device, are configured to update described chart database and described Assessment models.
16. devices according to claim 15, described updating device is also configured to
Multiple described new evaluation objects and corresponding assessment categories are updated in described knowledge graph;
Based on the described knowledge graph after updating and chart database, generate new assessment models;
Determine the accuracy of described new assessment models;And
Described accuracy based on described new assessment models, updates described assessment models.
17. devices according to claim 10, having with described evaluation object in the node of wherein said figure associates It is one or more that the affiliated partner of system includes in following item: the personal data object that evaluation object is associated;Evaluation object phase The collage-credit data object of association;The social relations data object that evaluation object is associated;The social networks that evaluation object is associated Data object;The communication data object that evaluation object is associated.
18. devices according to claim 10, the weight on the described limit in wherein said figure is at least based in following item One or more determine: the relationship type of the node associated by described limit;Association journey between node associated by described limit Degree.
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