基于数据挖掘技术的银行业信用风险评估研究

Ankita Mittal, A. Shrivastava, A. Saxena, M. Manoria
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引用次数: 2

摘要

银行业及其动态环境的日益复杂,使得风险评估变得非常重要,尤其是在金融领域。因此,金融机构之间存在着高度的竞争,导致了大部分贷款的损失。为了提高信用质量,降低信用风险,银行和研究人员开发了信用评分模型,以改进信用评估过程中的信用评估过程。由于数据库的复杂性,对客户的信誉度进行评估是相当困难的。为了解决这些问题,需要一个框架,该框架可以结合一些特征来决定风险评估。本文讨论了使用机器学习方法的风险评估模型的简要研究,并设计了拟议的体系结构,目的是与其他现有方法相比,显著降低数据的维数并提高分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study on Credit Risk Assessment in Banking Sector using Data Mining Techniques
The emerging complexity of banking and its dynamic environment, risk assessment has become very important, particularly in the financial sector. As a result, there is a high level of competition between financial institutions, resulting in the loss of most loans. In order to improve credit quality and reduce credit risk, banks and researchers have developed credit scoring models to improve the credit assessment process during the credit assessment process. It is quite difficult for anyone for assess credibility of customer due to the complexity of the database. In order to tackle such issues, there is need for a framework which can decides the risk assessment by combining some characteristics. In this paper a brief study of risk assessment models using machine learning approach is discussed as well as proposed architecture is designed with an aim to significantly reduce the dimensionality of the data as well as to increase the accuracy of the classifications compared to other existing methods.
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