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Credit Risk Evaluation in Peer-to-peer Lending With Linguistic Data Transformation and Supervised Learning

机译:基于语言数据转换和监督学习的点对点借贷信用风险评估

摘要

The widespread availability of various peer-to-peer lending solutions is rapidly changing the landscape of ï¬ nancial services. Beside the natural advantages over traditional services,a relevant problem in the domain is to correctly assess the risk associated with borrowers. In contrast to traditional ï¬ nancial services industries, in peer-to-peer lending the unsecured nature of loans as well as the relative novelty of the platforms make the assessment of risk a difï¬ cult problem. In this article we propose to use traditional machine learning methods enhanced with fuzzy set theory based transformation of data to improve the quality of identifying loans with high likelihood of default. We assess the proposed approach on a real-life dataset from one of the largest peer-to-peer platforms in Europe. The results demonstrate that (i) traditional classiï¬ cation algorithms show good performance in classifying borrowers, and (ii) their performance can be improved using linguistic data transformation
机译:各种点对点贷款解决方案的广泛普及正在迅速改变金融服务的格局。除了相对于传统服务的天然优势外,该领域的一个相关问题是正确评估与借款人相关的风险。与传统的金融服务行业相反,在点对点贷款中,贷款的无抵押性质以及平台的相对新颖性使风险评估成为一个难题。在本文中,我们建议使用基于模糊集理论的数据转换增强的传统机器学习方法,以提高具有高违约可能性的贷款识别质量。我们在来自欧洲最大的对等平台之一的真实数据集上评估了建议的方法。结果表明:(i)传统分类算法在对借款人进行分类时表现出良好的性能,并且(ii)使用语言数据转换可以提高其性能

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