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A multi-objective instance-based decision support system for investment recommendation in peer-to-peer lending

机译:基于多目标实例的决策支持系统,用于对等贷款的投资建议

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Peer-to-peer (P2P) lending has attracted many investors and borrowers since 2005. This financial market helps investors and borrowers to invest in or get loans without a traditional financial intermediary. Investors in the P2P lending market are allowed to invest in multiple loans instead of financing one loan entirely, so investment decision-making in P2P lending can be challenging for lenders because they are not usually expert in loan investing. The goal of this paper is to propose a data-driven investment decision-making framework for this competitive market. We use the artificial neural network and logistic regression to estimate the return and the probability of default (PD) of each individual loan. The return variable is the internal rate of return (IRR). Moreover, we formulate the investment decision-making in P2P lending as a multi-objective portfolio optimization problem based on the mean-variance theory by the use of the non-dominated sorting genetic algorithm (NSGA2). To validate the proposed model, we use a real-world dataset from one of the most popular P2P lending marketplaces. In addition, our model is compared with a single-objective model and a profit-based approach. Throughout the experiment, the empirical results reveal that our multi-objective model in comparison with the single-objective model can improve a lender's investment decision based on both objectives of investments. It means that while the return increases, the risk decreases, simultaneously. On the other hand, it is concluded that the profit scoring model leads to a more profitable investment but with a high level of risk. Finally, a sensitivity analysis is done to check the sensitivity of our model to the total investment amount. (C) 2020 Elsevier Ltd. All rights reserved.
机译:PEER-to-PEER(P2P)贷款自2005年以来吸引了许多投资者和借款人。该金融市场有助于投资者和借款人在没有传统金融中介的情况下投资或获得贷款。 P2P贷款市场的投资者可允许投资多个贷款而不是完全融资一笔贷款,因此P2P贷款的投资决策可能是贷方的挑战,因为它们通常不是贷款投资专家。本文的目标是提出该竞争市场的数据驱动的投资决策框架。我们使用人工神经网络和Logistic回归来估算每个单独贷款的返回和违约概率(PD)。返回变量是内部返回率(IRR)。此外,通过使用非主导的分类遗传算法(NSGA2),我们基于平均方差理论,将P2P贷款的投资决策作为一种多目标组合优化问题。为了验证所提出的模型,我们使用最受欢迎的P2P贷款市场之一的真实数据集。此外,我们的模型与单一目标模型和基于利润的方法进行了比较。在整个实验中,经验结果表明,我们的多目标模型与单目标模型相比可以根据投资的两个目标来改善贷方的投资决策。这意味着虽然返回增加,风险同时降低。另一方面,得出结论,利润评分模式导致更有利可图的投资,但风险很高。最后,完成敏感性分析以检查我们模型的敏感性到总投资金额。 (c)2020 elestvier有限公司保留所有权利。

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