Bank Default Prediction: A Comparative Model using Principal ComponentAnalysis

T. Mitchell
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引用次数: 2

Abstract

Bank default prediction continues to draw attention given the ongoing effects of the recent financial crisis. Seminal works have found that structural models are better predictors of default. In this paper I argue that accounting models predictive ability have been weakened due to the multicollinearity problem and propose principal component analysis to improve the accounting model. The paper then compares accounting and structural default prediction models using a logit analysis and further evaluates the performance of a combination of accounting and structural default models to predict default. The paper uses panel data on US banks from the Federal Deposit Insurance Corporation database between 1995-2012 and the analysis is developed on 519 defaulted bank years and 5,965 non defaulted bank years. The accounting model is improved and outperforms the structural model; the study also finds that a combination of both models performs better than any one model at predicting default in the US banking system.
银行违约预测:使用主成分分析的比较模型
鉴于最近金融危机的持续影响,银行违约预测继续引起人们的关注。一些开创性的研究发现,结构模型能更好地预测违约。本文认为会计模型的预测能力由于多重共线性问题而被削弱,并提出主成分分析来改进会计模型。然后,本文使用logit分析比较了会计和结构性违约预测模型,并进一步评估了会计和结构性违约模型组合预测违约的性能。本文使用了联邦存款保险公司(Federal Deposit Insurance Corporation)数据库中1995年至2012年间美国银行的面板数据,并对519个违约银行年份和5965个未违约银行年份进行了分析。改进后的会计模型优于结构模型;该研究还发现,在预测美国银行体系违约方面,两种模型的结合比任何一种模型都要好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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