Fintech Application in Banking Operations - Application of Machine Learning in Mitigating Bank Derivatives Counterparty Risks

Q2 Social Sciences
Tianshu Li
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引用次数: 1

Abstract

We all know that human has many psychological biases, including overconfidence, gender discrimination and so on. Although some genuine lenders may outperformance others, machine learnings have been utilized to solve this human psychological bias in many areas. By using machine learnings methods, people can make better financial decisions. This proposal tries to examine the effectiveness of several different machine learning models on predicting the ex-pose default risk, including BP neural network, decision tree, KNN, and random forest. I focus on loans on one electronic P2P lending platform, called “Paipaidai” in which lenders select and supply private loans to borrowers with different characteristics. I use machine learnings methods to predict the default risk and thus provides better ways for investors to select high-quality borrower. I will also further test how different machine learnings methods perform when there is soft information contained by using Prosper platform.
金融科技在银行业务中的应用——机器学习在降低银行衍生品交易对手风险中的应用
我们都知道人类有很多心理偏见,包括过度自信,性别歧视等等。尽管一些真正的贷款人可能比其他人表现更好,但机器学习已被用于解决许多领域的这种人类心理偏见。通过使用机器学习方法,人们可以做出更好的财务决策。本文试图检验几种不同的机器学习模型在预测暴露违约风险方面的有效性,包括BP神经网络、决策树、KNN和随机森林。我关注的是一个名为“拍拍贷”的电子P2P借贷平台上的贷款,在这个平台上,贷款人选择并向不同特征的借款人提供私人贷款。我使用机器学习的方法来预测违约风险,从而为投资者选择优质借款人提供更好的方法。我还将进一步测试不同的机器学习方法在使用Prosper平台包含软信息时的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Asian Journal of Business Research
Asian Journal of Business Research Social Sciences-Political Science and International Relations
CiteScore
2.40
自引率
0.00%
发文量
8
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