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An empirical study of classification algorithm evaluation for financial risk prediction

机译:金融风险预测的分类算法评估实证研究

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摘要

A wide range of classification methods have been used for the early detection of financial risks in recent years. How to select an adequate classifier (or set of classifiers) for a given dataset is an important task in financial risk prediction. Previous studies indicate that classifiers' performances in financial risk prediction may vary using different performance measures and under different circumstances. The main goal of this paper is to develop a two-step approach to evaluate classification algorithms for financial risk prediction. It constructs a performance score to measure the performance of classification algorithms and introduces three multiple criteria decision making (MCDM) methods (i.e., TOPSIS, PROMETHEE, and VIKOR) to provide a final ranking of classifiers. An empirical study is designed to assess various classification algorithms over seven real-life credit risk and fraud risk datasets from six countries. The results show that linear logistic, Bayesian Network, and ensemble methods are ranked as the top-three classifiers by TOPSIS, PROMETHEE, and VIKOR. In addition, this work discusses the construction of a knowledge-rich financial risk management process to increase the usefulness of classification results in financial risk detection.
机译:近年来,各种各样的分类方法已用于财务风险的早期检测。如何为给定的数据集选择适当的分类器(或一组分类器)是财务风险预测中的重要任务。先前的研究表明,分类者在财务风险预测中的表现可能会因使用不同的绩效指标和不同的情况而有所不同。本文的主要目标是开发一种两步方法来评估用于金融风险预测的分类算法。它构建了一个性能评分来衡量分类算法的性能,并引入了三种多准则决策(MCDM)方法(即TOPSIS,PROMETHEE和VIKOR)来提供分类器的最终排名。一项实证研究旨在评估来自六个国家/地区的七个真实信用风险和欺诈风险数据集的各种分类算法。结果表明,线性逻辑,贝叶斯网络和集成方法在TOPSIS,PROMETHEE和VIKOR中排名前三。此外,这项工作还讨论了知识丰富的金融风险管理流程的构建,以提高分类结果在金融风险检测中的实用性。

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