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A Deep Learning Approach to Competing Risks Representation in Peer-to-Peer Lending

机译:点对点贷款中竞争风险表示的深度学习方法

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摘要

Online peer-to-peer (P2P) lending is expected to benefit both investors and borrowers due to their low transaction cost and the elimination of expensive intermediaries. From the lenders' perspective, maximizing their return on investment is an ultimate goal during their decision-making procedure. In this paper, we explore and address a fundamental problem underlying such a goal: how to represent the two competing risks, charge-off and prepayment, in funded loans. We propose to model both potential risks simultaneously, which remains largely unexplored until now. We first develop a hierarchical grading framework to integrate two risks of loans both qualitatively and quantitatively. Afterward, we introduce an end-to-end deep learning approach to solve this problem by breaking it down into multiple binary classification subproblems that are amenable to both feature representation and risks learning. Particularly, we leverage deep neural networks to jointly solve these subtasks, which leads to the in-depth exploration of the interaction involved in these tasks. To the best of our knowledge, this is the first attempt to characterize competing risks for loans in P2P lending via deep neural networks. The comprehensive experiments on real-world loan data show that our methodology is able to achieve an appealing investment performance by modeling the competition within and between risks explicitly and properly. The feature analysis based on saliency maps provides useful insights into payment dynamics of loans for potential investors intuitively.
机译:由于点对点(P2P)网上交易的交易成本低,而且消除了昂贵的中介机构,因此有望使投资者和借款人受益。从贷方的角度来看,最大化他们的投资回报是他们决策过程中的最终目标。在本文中,我们探索并解决了实现该目标的基本问题:如何在融资贷款中代表两种相互抵消的风险,即冲销和预付款。我们建议同时对两个潜在风险进行建模,直到目前仍未充分探索。我们首先建立一个分级的分级框架,以定性和定量地整合两种贷款风险。然后,我们引入端到端深度学习方法来解决该问题,方法是将其分解为多个既适合特征表示又适合风险学习的二进制分类子问题。特别是,我们利用深度神经网络来共同解决这些子任务,从而导致对这些任务所涉及的交互的深入探索。据我们所知,这是首次尝试通过深度神经网络描述P2P借贷中的贷款竞争风险。对现实世界贷款数据的综合实验表明,我们的方法能够通过对风险内和风险之间的竞争进行建模,从而正确而恰当地实现吸引人的投资绩效。基于显着性图的特征分析可以直观地为潜在投资者提供有用的见解,以了解贷款的支付动态。

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