Data Analytics for Credit Risk Models in Retail Banking: a new era for the banking system

Adamaria Perrotta, Andrea Monaco, Georgios Bliatsios
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Abstract

Given the nature of the lending industry and its importance for global economic stability, financial institutions have always been keen on estimating the risk profile of their clients. For this reason, in the last few years several sophisticated techniques for modelling credit risk have been developed and implemented. After the financial crisis of 2007-2008, credit risk management has been further expanded and has acquired significant regulatory importance. Specifically, Basel II and III Accords have strengthened the conditions that banks must fulfil to develop their own internal models for estimating the regulatory capital and expected losses. After motivating the importance of credit risk modelling in the banking sector, in this contribution we perform a review of the traditional statistical methods used for credit risk management. Then we focus on more recent techniques based on Machine Learning techniques, and we critically compare tradition and innovation in credit risk modelling. Finally, we present a case study addressing the main steps to practically develop and validate a Probability of Default model for risk prediction via Machine Learning Techniques
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零售银行业信用风险模型数据分析:银行系统的新时代
鉴于贷款行业的性质及其对全球经济稳定的重要性,金融机构一直非常重视对客户风险状况的评估。为此,在过去几年中,开发并实施了几种复杂的信用风险建模技术。2007-2008 年金融危机之后,信用风险管理得到进一步扩展,并在监管方面具有重要意义。具体而言,《巴塞尔协议 II》和《巴塞尔协议 III》强化了银行开发自己的内部模型以估算监管资本和预期损失所必须满足的条件。在阐述了信用风险建模在银行业的重要性之后,我们在本文中回顾了用于信用风险管理的传统统计方法。然后,我们重点介绍了基于机器学习技术的最新技术,并对信用风险建模中的传统与创新进行了批判性比较。最后,我们介绍了一个案例研究,涉及通过机器学习技术实际开发和验证用于风险预测的违约概率模型的主要步骤。
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