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An empirical comparison of classification algorithms for mortgage default prediction: evidence from a distressed mortgage market

机译:抵押贷款违约预测分类算法的经验比较:来自不良抵押贷款市场的证据

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This paper evaluates the performance of a number of modelling approaches for future mortgage default status. Boosted regression trees, random forests, penalised linear and semi-parametric logistic regression models are applied to four portfolios of over 300,000 Irish owner-occupier mortgages. The main findings are that the selected approaches have varying degrees of predictive power and that boosted regression trees significantly outperform logistic regression. This suggests that boosted regression trees can be a useful addition to the current toolkit for mortgage credit risk assessment by banks and regulators. (C) 2015 Elsevier B.V. and Association of European Operational Research Societies (EURO) within the International Federation of Operational Research Societies (IFORS). All rights reserved.
机译:本文评估了许多用于未来抵押贷款违约状态的建模方法的性能。增强型回归树,随机森林,惩罚线性和半参数对数回归模型适用于爱尔兰超过300,000个抵押贷款的四个投资组合。主要发现是所选方法具有不同程度的预测能力,并且增强回归树的性能明显优于逻辑回归。这表明增强的回归树可以成为当前用于银行和监管机构抵押信贷风险评估的工具包的有用补充。 (C)2015年Elsevier B.V.和国际运营研究学会联合会(IFORS)中的欧洲运营研究学会协会(EURO)。版权所有。

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