Deep Dense Convolutional Networks for Repayment Prediction in Peer-to-Peer Lending

In peer-to-peer (P2P) lending, it is important to predict default of borrowers because the lenders would suffer financial loss if the borrower fails to pay money. The huge lending transaction data generated online helps to predict repayment of the borrowers, but there are limitations in extracting features based on the complex information. Convolutional neural networks (CNN) can automatically extract useful features from large P2P lending data. However, as deep CNN becomes more complex and deeper, the information about input vanishes and overfitting occurs. In this paper, we propose a deep dense convolutional networks (DenseNet) for default prediction in P2P social lending to automatically extract features and improve the performance. DenseNet ensures the flow of loan information through dense connectivity and automatically extracts discriminative features with convolution and pooling operations. We capture the complex features of lending data and reuse loan information to predict the repayment of the borrower. Experimental results show that the proposed method automatically extracts useful features from Lending Club data, avoids overfitting, and is effective in default prediction. In comparison with deep CNN and other machine learning methods, the proposed method has achieved the highest performance with 79.6%. We demonstrate the usefulness of the proposed method as the 5-fold cross-validation to evaluate the performance.

[1]  Yuejin Zhang,et al.  Determinants of loan funded successful in online P2P Lending , 2017, ITQM.

[2]  Paul Parboteeah,et al.  The Business Models and Economics of Peer-to-Peer Lending , 2016 .

[3]  Sung-Bae Cho,et al.  Predicting the success of bank telemarketing using deep convolutional neural network , 2015, 2015 7th International Conference of Soft Computing and Pattern Recognition (SoCPaR).

[4]  Jennifer Jie Xu,et al.  Identifying features for detecting fraudulent loan requests on P2P platforms , 2016, 2016 IEEE Conference on Intelligence and Security Informatics (ISI).

[5]  Carlos Serrano-Cinca,et al.  The use of profit scoring as an alternative to credit scoring systems in peer-to-peer (P2P) lending , 2016, Decis. Support Syst..

[6]  Riza Emekter,et al.  Evaluating credit risk and loan performance in online Peer-to-Peer (P2P) lending , 2015 .

[7]  Zhao Wang,et al.  Loan default prediction by combining soft information extracted from descriptive text in online peer-to-peer lending , 2018, Ann. Oper. Res..

[8]  Sung-Bae Cho,et al.  Human activity recognition with smartphone sensors using deep learning neural networks , 2016, Expert Syst. Appl..

[9]  Xiaolong Li,et al.  Evaluating borrower’s default risk in peer-to-peer lending: evidence from a lending platform in China , 2017 .

[10]  Enhong Chen,et al.  P2P Lending Survey , 2017, ACM Trans. Intell. Syst. Technol..

[11]  Nitish Srivastava,et al.  Dropout: a simple way to prevent neural networks from overfitting , 2014, J. Mach. Learn. Res..

[12]  Vural Aksakalli,et al.  Risk assessment in social lending via random forests , 2015, Expert Syst. Appl..

[13]  Geoffrey E. Hinton,et al.  Rectified Linear Units Improve Restricted Boltzmann Machines , 2010, ICML.

[14]  Sung-Bae Cho,et al.  Dempster-Shafer Fusion of Semi-supervised Learning Methods for Predicting Defaults in Social Lending , 2017, ICONIP.

[15]  Yijie Fu,et al.  Combination of Random Forests and Neural Networks in Social Lending , 2017 .

[16]  Kilian Q. Weinberger,et al.  Densely Connected Convolutional Networks , 2016, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[17]  Kilian Q. Weinberger,et al.  Deep Networks with Stochastic Depth , 2016, ECCV.

[18]  Jiaqi Yan,et al.  How signaling and search costs affect information asymmetry in P2P lending: the economics of big data , 2015 .