Deep Learning Anti-Fraud Model for Internet Loan Where We Are Going

Authors

  • K SUPARNA Author
  • S. HALIMUNNISA Author

Keywords:

financial companies, Internet, Internet finance, logistic regression, fraud detection, deep learning, anti-fraud for Internet loans

Abstract

Recently, Internet finance is increasingly popular. However, bad debt has become a serious threat to Internet financial companies. The fraud detection models commonly used in conventional financial companies is logistic regression. Although it is interpretable, the accuracy of the logistic regression still remains to be improved. This paper takes a large public loan dataset, e.g. Lending club, for example, to explore the potential of applying deep neural network for fraud detection. We first _all the missing values by a random forest. Then, an XGBoost algorithm is employed to select the most discriminate features. After that, we propose to use a synthetic minority oversampling technique to deal with the sample imbalance. With the pre-processed data, we design a deep neural network for Internet loan fraud detection. Extensive experiments have been conducted to demonstrate the outperformance of the deep neural network compared with the commonly-used models. Such a simple yet effective model may brighten the application of deep learning in anti-fraud for Internet loans, which would benefit the financial engineers in small and medium Internet financial companies.

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Published

05-08-2024

How to Cite

Deep Learning Anti-Fraud Model for Internet Loan Where We Are Going. (2024). International Journal of Information Technology and Computer Engineering, 12(3), 269-277. https://ijitce.org/index.php/ijitce/article/view/673