信用风险评估的人工智能方法综述

I. Berrada, Fatimazahra Barramou, O. B. Alami
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引用次数: 2

摘要

每天,世界各地的每家银行都必须分析来自其客户和潜在客户、个人、专业人士或公司的许多信贷申请。银行根据不同的参数开发自己的评级系统,但大多数银行并没有利用海量的可用和持续收集的大数据。为了提取有价值的信息,大数据分析(BDA)和人工智能(AI)为银行业带来了有趣的应用,如细分、定制服务、客户关系管理、欺诈检测、信用风险评估,以及所有后台、中台和前台任务。本文介绍了人工智能对信用风险评估的好处。针对这一具体问题,讨论了实际研究进展的现状。为了处理这一审查,我们首先集中在关键词上,以捕获和分析现有的专家文章。我们将时间限制在2016年至2021年,以浏览最近的进展。研究人员探索了不同的特征选择、分类和预测方法。数据挖掘、机器学习(有监督和无监督)和深度学习(人工神经网络)的算法非常不同,需要探索的方面很多。有了这些进步,银行可以变得更聪明,提供更好、更快捷的服务,同时避免因信用违约者而遭受损失。根据研究结果,支持向量机、Catboost、决策树和逻辑回归都取得了有趣的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review of Artificial Intelligence approach for credit risk assessment
Every day, each bank around the world has to analyze many credit applications from its customers and prospects, individuals, professionals, or companies. Banks develop their rating system based on different parameters but most of them do not take benefit of the tremendous set of Big Data available and gathered continuously. To extract valuable information, Big Data analysis (BDA) and artificial intelligence (AI) lead to interesting applications for the banking industry such as segmentation, customized service, customer relationship management, fraud detection, credit risk assessment, and in all back, middle, and front office missions. This article presents the benefit of artificial intelligence for credit risk assessment. A state of art for the actual research advance is discussed concerning this specific item. To handle this review, we first focused on the keywords to capture and analyze the available articles of experts. We limited the period from 2016 to 2021 to skim the recent advances. Researchers have explored different methods with feature selection, classification, and prediction. Algorithms of Data mining, machine learning (supervised and unsupervised), and deep learning (artificial neural networks) are very different and tackle various aspects to be explored. With these advances, banks can become smart and propose a better and quicker service while preserving themselves from losses due to credit defaulters. Support vector machine, Catboost, decision tree, and logistic regression have delivered interesting results according to the studied researches.
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