阿联酋商业银行信贷风险评估模型:机器学习方法

Aditya Saxena, Dr Parizad Dungore
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引用次数: 0

摘要

信用评级正成为国家金融机构评估信用风险的主要参考之一,以准确预测个人或企业经营失败的可能性。因此,金融机构依赖于信用评级工具和服务,以帮助他们预测债权人满足财务要求的能力。传统的信用评级大致分为两类,即良好信用和不良信用。这种方法缺乏足够的精确性,无法在实践中进行信用风险分析。相关研究表明,数据驱动的机器学习算法在解决这类问题的准确性和效率方面都优于许多传统的统计方法。本文的目的是利用线性判别分析(Linear Discriminant Analysis)作为一种降维技术,构建并验证一种信用风险评估模型,以区分好的债权人和坏的债权人,并基于真实世界的数据确定商业银行信用评估的最佳分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Risk Assessment Model for UAE Commercial Banks: A Machine Learning Approach
Credit ratings are becoming one of the primary references for financial institutions of the country to assess credit risk in order to accurately predict the likelihood of business failure of an individual or an enterprise. Financial institutions, therefore, depend on credit rating tools and services to help them predict the ability of creditors to meet financial persuasions. Conventional credit rating is broadly categorized into two classes namely: good credit and bad credit. This approach lacks adequate precision to perform credit risk analysis in practice. Related studies have shown that data-driven machine learning algorithms outperform many conventional statistical approaches in solving this type of problem, both in terms of accuracy and efficiency. The purpose of this paper is to construct and validate a credit risk assessment model using Linear Discriminant Analysis as a dimensionality reduction technique to discriminate good creditors from bad ones and identify the best classifier for credit assessment of commercial banks based on real-world data. This will help commercial banks to avoid monetary losses and prevent financial crisis
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