Abstract

Recent frequent “thunderstorm incidents” of P2P lending industry have caused the panic of industry investors. To predict the investment risk of P2P lending, we should scientifically and rationally analyze the key influencing factors of P2P lending investment risk. Existing key influencing factors selection methods mainly involve traditional statistical approaches and artificial intelligence methods. The traditional statistical approaches cannot deal with the high-dimensional nonlinear problems, and it cannot find the exact key influencing factors of the P2P lending investment risk. The artificial intelligence methods cannot recognize and learn the application background, and the selected attributes without active thinking and personal perception may not be the key influencing factors of P2P lending investment risk. To address the above issues, a novel key influencing factors selection approach of P2P lending investment risk is proposed by combining the proposed fireworks coevolution binary glowworm swarm optimization (FCBGSO), multifractal dimension (MFD), probit regression, and artificial prior knowledge. First, multifractal dimension combined with the proposed FCBGSO is used to select the preliminary influencing factors of the investment risk; second, the nonsignificant relevant attributes in the preliminary influencing factors are removed using the probit regression, and we add the influencing factors extracted from the original dataset of P2P lending using the artificial prior knowledge into the retaining influencing factors after removing one by one. A small and reasonable number of influencing factor subsets are achieved. Finally, we evaluate each influencing factors subset using extreme learning machine (ELM), and the subset with the best classification accuracy is efficiently achieved, i.e., it is the key influencing factors of P2P lending investment risk. Experimental results on the real P2P lending dataset from the Renrendai platform demonstrate that the proposed approach performs better than other state-of-the-art methods and that it has validity and effectiveness. It provides a new research idea for the key influencing factors selection of P2P lending investment risk.

Highlights

  • Peer-to-peer (P2P) lending is a new financial model that integrates Internet platforms and private lending

  • Erefore, we proposed a novel approach to find the key influencing factors of P2P lending investment risk, which combines multifractal dimension (MFD), fireworks coevolution binary glowworm swarm optimization (FCBGSO), the probit regression, and the artificial prior knowledge. e mission is attained in four steps: in the first step, we take the proposed FCBGSO as a search strategy and treat MFD as an evaluation criterion for feature subsets. en, the preliminary attribute subset extracted from the original dataset of P2P lending is attained using the combination of FCBGSO and MFD

  • Existing traditional statistical approaches cannot find the exact key influencing factors of the P2P lending investment risk, and the attributes achieved by artificial intelligence methods may not be the key influencing factors of P2P lending investment risk

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Summary

Introduction

Peer-to-peer (P2P) lending is a new financial model that integrates Internet platforms and private lending. P2P lending is one of the most important modes of Internet finance On one hand, it can serve the real economy; on the other hand, the recent frequent occurrences of P2P lending “thunderstorm incidents” have damaged the earnings of investors and hindered the healthy development of P2P lending industry. E large-scale “thunderstorm incidents” in the P2P lending industry have caused a strong impact on the healthy development of this industry. It has attracted great attention of the Chinese government.

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