Analysis of Internet Financial Risk Control Model Based on Machine Learning Algorithms

Author:

Liu Mingjin1ORCID,Gao Ruijie2,Fu Wei3

Affiliation:

1. Information Technology Center, Sichuan Water Conservancy College, Chengdu 611231, China

2. School of Marxism, Sichuan Water Conservancy College, Chengdu 611231, China

3. Organization Department, Sichuan Water Conservancy College, Chengdu 611231, China

Abstract

On the basis of traditional credit risk control, this paper proposes the demand and direction of a new credit risk control strategy based on machine learning and relying on big data. First, on the basis of introducing the basic algorithmic principles of machine learning, we give reasons for choosing machine learning models and build a machine learning-based Internet consumer finance credit risk control strategy model to provide theoretical support for the empirical analysis later. Second, we take the test data of Internet consumer finance S company as the research sample and carry out empirical analysis according to the machine learning-based Internet consumer finance credit risk control strategy model. The comparison of the training results is based on the comprehensive consideration of training time, validation set accuracy, TPR evaluation indicators, and interpretability of the results; it verifies the advantages of the machine learning model in screening the key influencing factors that cause the overdue performance of credit customers. According to the optimized credit risk control strategy, corresponding strategy suggestions are provided for the credit risk control of S company. The research results show that the prediction effect of the classification model based on traditional linear regression is generally lower than that of the model based on the classification algorithm based on machine learning, and there is a complex nonlinear relationship between platform default and its related influencing factors. The accuracy of classification and early warning results of the random forest algorithm is relatively high, and the detection rate of the decision tree model is relatively high, but the cost is also the highest. In addition, the accuracy of the four types of early warning models is relatively stable, reaching an average of 80%. This paper proposes a machine learning-based Internet consumer finance credit risk control strategy model. Its system, timeliness, and risk prediction capabilities provide new ideas and suggestions for Internet consumer finance companies to design risk control strategies.

Publisher

Hindawi Limited

Subject

General Mathematics

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Machine learning in internet financial risk management: A systematic literature review;PLOS ONE;2024-04-16

2. Big Data Methodology for Credit Card Usage and Account Transaction Based Financial Risk Identification Using Hybrid NBRF Method;2023 4th International Conference on Smart Electronics and Communication (ICOSEC);2023-09-20

3. Complex Data Prediction and Classification Methods based on Feature Selection and Data Dimensionality Reduction;2023 4th International Conference for Emerging Technology (INCET);2023-05-26

4. Construction of Digital Financial Risk Early Warning Model Based on Decision Tree Algorithm;2023 5th International Conference on Decision Science & Management (ICDSM);2023-03-03

5. Credit risk Prediction Model of Financial Companies Based on Machine Learning Algorithm;2023 IEEE International Conference on Integrated Circuits and Communication Systems (ICICACS);2023-02-24

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