Abstract

Personal credit risk assessment is an important part of the development of financial enterprises. Big data credit investigation is an inevitable trend of personal credit risk assessment, but some data are missing and the amount of data is small, so it is difficult to train. At the same time, for different financial platforms, we need to use different models to train according to the characteristics of the current samples, which is time-consuming. In view of these two problems, this paper uses the idea of transfer learning to build a transferable personal credit risk model based on Instance-based Transfer Learning (Instance-based TL). The model balances the weight of the samples in the source domain, and migrates the existing large dataset samples to the target domain of small samples, and finds out the commonness between them. At the same time, we have done a lot of experiments on the selection of base learners, including traditional machine learning algorithms and ensemble learning algorithms, such as decision tree, logistic regression, xgboost and so on. The datasets are from P2P platform and bank, the results show that the AUC value of Instance-based TL is 24% higher than that of the traditional machine learning model, which fully proves that the model in this paper has good application value. The model’s evaluation uses AUC, prediction, recall, F1. These criteria prove that this model has good application value from many aspects. At present, we are trying to apply this model to more fields to improve the robustness and applicability of the model; on the other hand, we are trying to do more in-depth research on domain adaptation to enrich the model.

Highlights

  • Personal credit risk is a part that both government and enterprises attach great importance to

  • We have done a lot of experiments on the selection of base learners, including traditional machine learning algorithms and ensemble learning algorithms, such as decision tree, logistic regression, xgboost and so on

  • In order to ensure the maturity of the transfer learning framework,we innovatively introduce the classic algorithm of Instance-based Transfer Learning, the tradaboost algorithm, to apply to the data in the field of financial credit reference [4]

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Summary

Introduction

Personal credit risk is a part that both government and enterprises attach great importance to. The development of personal credit risk assessment model is from traditional credit assessment model to data mining credit risk assessment model. It has gone through the process from traditional credit assessment model to big data credit assessment model. The existing data mining credit risk assessment models have relatively high accuracy, but only limited to the case of sufficient data and less missing values. This paper introduces Instance-based Transfer Learning, which migrates the existing large data set samples to the target field of small samples, finding out the commonness between them, and realizing the training of the target domain dataset. The third section constructs the personal credit risk assessment model based on the idea of Instance-based transfer.

Related Works
The Build of Instance-Based Transfer Learning
Base Learner Selection
The Source of the Dataset
Missing Values Processing
Experimental Results and Comparative Analysis Results
Conclusion
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