Credit-fraud detection model train method, credit-fraud detection method and device

A detection model and technology to be detected, applied in the field of information processing, can solve problems such as low efficiency, complexity, and large amount of information

Inactive Publication Date: 2019-02-01
BEIJING TRUSFORT TECH CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0006] When the credit platform conducts credit review on loan users, it basically relies on the expert experience of business personnel to make judgments. Since the bank’s historical flow information is often complicated and the amount of information involved is relatively large, it is not only inefficient to manually review , and it is difficult to draw an overall correct conclusion by combining bank flow data and user personal information

Method used

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  • Credit-fraud detection model train method, credit-fraud detection method and device
  • Credit-fraud detection model train method, credit-fraud detection method and device
  • Credit-fraud detection model train method, credit-fraud detection method and device

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Experimental program
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Effect test

Embodiment 1

[0167] see figure 1 As shown, it is a flow chart of the loan fraud detection model training method provided in Embodiment 1 of the present application, the method includes steps S101 to S106, wherein:

[0168] S101. Obtain identity information of multiple sample users, user bank statement information, and fraud tag information corresponding to each user.

[0169] In the specific implementation, when the sample users are screened, they are screened from users who have initiated loan applications and have issued loans to them.

[0170] The user's identity information is related information used to characterize the user's identity. It is not just a single identity information such as ID number and name, but a user's identity based on a series of social attributes. For example, the identity information It can include: user education, occupation, region, gender, age, family relationship, credit information on other platforms, asset status, etc.

[0171] The user's bank statement ...

Embodiment 2

[0305] see Image 6 As shown, Embodiment 2 of the present application also provides a loan fraud detection method, the method comprising:

[0306] S601. Obtain the identity information of the user to be detected and the bank statement information of the user.

[0307] S602. Based on the identity information of the user to be detected, construct an identity feature vector of the user to be detected

[0308] S603. Construct a behavior pattern vector of the user to be detected according to the identity feature vector of the user to be detected and the first vector transformation matrix.

[0309] S604. According to the behavior pattern vector of the user to be detected, the second transformation matrix, and the bank statement information of the user, construct a flow feature vector of the user to be detected.

[0310] S605. Input the target feature vector of the user to be detected into the loan fraud detection model obtained through the loan fraud detection model training metho...

Embodiment 3

[0316] refer to Figure 7 As shown, it is a schematic diagram of a loan fraud detection model training device 700 provided in Embodiment 3 of the present application. A loan fraud detection model training device includes:

[0317] The first obtaining module 701 is used to obtain the identity information of a plurality of sample users, the user's bank statement information, and the fraud tag information corresponding to each user;

[0318] The first construction module 702 is configured to, for each sample user, construct an identity feature vector according to the identity information of the sample user, and use a first vector transformation matrix to perform nonlinear transformation on the identity feature vector to obtain the sample user behavior pattern vector;

[0319] The second construction module 703 is used to construct the profile feature vector of the sample user according to the user behavior pattern vector of the sample user, the second vector transformation matri...

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Abstract

The invention provides a lending fraud detection model training method, a lending fraud detection method and a lending fraud detection device. The lending fraud detection model training method comprises the following steps: obtaining identity information of a plurality of sample users, user bank pipeline information and fraud label information corresponding to each user; Constructing identity feature vector and user behavior pattern vector according to identity information; According to the user behavior pattern vector, the second vector transformation matrix and the user bank pipeline information, the pipeline characteristic vector is constructed. Generating a target feature vector according to a user behavior pattern vector and a pipeline feature vector; The target eigenvector is inputted into the target neural network, and the fraud detection result of the target eigenvector is obtained. Then the target neural network, the first vector transformation matrix and the second vector transformation matrix are trained to obtain the debit and credit fraud detection model. The application can improve the identification efficiency and the identification accuracy of the fraudulent user bythe credit platform, and greatly save the human cost.

Description

technical field [0001] The present application relates to the technical field of information processing, in particular to a loan fraud detection model training method and device. Background technique [0002] With the rapid development of Internet finance, the incidence of Internet fraud and credit risk has increased. According to statistics, in recent years, the non-performing asset rate of the consumer finance industry in China has been on the rise. China's Internet fraud risk has ranked among the top three in the world. Cybercrime brings economic losses of up to 445 billion US dollars to the world every year. Penetration of different industries. [0003] Internet financial risks include credit risk and operational risk. Credit risk means that customers have no intention of repaying the loan when they initiate a loan request. Among them, fraud is the highest credit risk, and more than 50% of the bad debt losses of consumer finance come from fraud. [0004] In order to a...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q40/02G06K9/62
CPCG06Q40/03G06F18/214G06F18/24G06Q30/0185G06N3/08G06N3/04
Inventor 郭豪孙善萍陈雨濛蔡准孙悦郭晓鹏
Owner BEIJING TRUSFORT TECH CO LTD
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