数据聚合和风险属性对抵押贷款违约压力测试模型的影响

IF 0.3 4区 经济学 Q4 Economics, Econometrics and Finance Journal of Credit Risk Pub Date : 2020-11-01 DOI:10.21314/jcr.2020.269
Feng Li,Yan Zhang
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引用次数: 0

摘要

压力测试模型已经在不同的数据聚集水平上开发出来,但对这些建模选择的联合影响的研究有限。本文以住房抵押贷款违约为研究对象,探讨数据聚合和风险属性如何影响压力测试模型的发展和性能。我们在各种数据聚合级别上开发抵押贷款违约模型,包括贷款级别、分段级别和自顶向下级别。我们还比较了有和没有风险属性作为控制变量的模型。我们为压力测试目的评估模型的拟合优度、预测准确性和投影灵敏度。我们发现贷款级别的模型并不总是在不同数据聚集级别的模型中胜出,并且包含风险属性大大提高了所有数据聚集级别模型的拟合优度和预测精度。研究结果表明,在开发压力测试模型时,考虑数据聚合和风险属性是很重要的。
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The impact of data aggregation and risk attributes on stress testing models of mortgage default
Stress testing models have been developed at various levels of data aggregation with or without risk attributes, but there is limited research on the joint impact of these modeling choices. In this paper, we investigate how data aggregation and risk attributes affect the development and performance of stress testing models by studying residential mortgage loan defaults. We develop mortgage default models at various data aggregation levels including loan-level, segment-level, and top-down. We also compare the models with and without risk attributes as control variables. We assess model performance for goodness-of-fit, prediction accuracy, and projection sensitivity for stress testing purposes. We find that the loan-level models do not always win among models with various data aggregation levels, and including risk attributes greatly improves goodness-of-fit and projection accuracy for models of all data aggregation levels. The findings suggest that it is important to consider data aggregation and risk attributes in developing stress testing models.
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来源期刊
Journal of Credit Risk
Journal of Credit Risk BUSINESS, FINANCE-
CiteScore
0.90
自引率
0.00%
发文量
10
期刊介绍: With the re-writing of the Basel accords in international banking and their ensuing application, interest in credit risk has never been greater. The Journal of Credit Risk focuses on the measurement and management of credit risk, the valuation and hedging of credit products, and aims to promote a greater understanding in the area of credit risk theory and practice. The Journal of Credit Risk considers submissions in the form of research papers and technical papers, on topics including, but not limited to: Modelling and management of portfolio credit risk Recent advances in parameterizing credit risk models: default probability estimation, copulas and credit risk correlation, recoveries and loss given default, collateral valuation, loss distributions and extreme events Pricing and hedging of credit derivatives Structured credit products and securitizations e.g. collateralized debt obligations, synthetic securitizations, credit baskets, etc. Measuring managing and hedging counterparty credit risk Credit risk transfer techniques Liquidity risk and extreme credit events Regulatory issues, such as Basel II, internal ratings systems, credit-scoring techniques and credit risk capital adequacy.
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