Asset Correlation Estimation for Inhomogeneous Exposure Pools

IF 0.3 4区 经济学 Q4 Economics, Econometrics and Finance Journal of Credit Risk Pub Date : 2017-01-08 DOI:10.21314/jcr.2019.251
Christoph Wunderer
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引用次数: 3

Abstract

A possible data source for the estimation of asset correlations is default time series. This study investigates the systematic error that is made if the exposure pool underlying a default time series is assumed to be homogeneous when in reality it is not. We find that the asset correlation will always be underestimated if homogeneity with respect to the probability of default (PD) is wrongly assumed, and the error is the larger the more spread out the PD is within the exposure pool. If the exposure pool is inhomogeneous with respect to the asset correlation itself then the error may be going in both directions, but for most PD- and asset correlation ranges relevant in practice the asset correlation is systematically underestimated. Both effects stack up and the error tends to become even larger if in addition a negative correlation between asset correlation and PD is assumed, which is plausible in many circumstances and consistent with the Basel RWA formula. It is argued that the generic inhomogeneity effect described is one of the reasons why asset correlations measured from default data tend to be lower than asset correlations derived from asset value data.
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非均匀暴露池的资产相关性估计
估计资产相关性的一个可能的数据源是默认时间序列。本研究调查了如果假设默认时间序列的暴露池是均匀的,而实际上不是均匀的,则所产生的系统误差。我们发现,如果错误地假设违约概率(PD)的同质性,资产相关性总是会被低估,并且PD在敞口池中越分散,误差越大。如果暴露池相对于资产相关性本身是不均匀的,那么误差可能是双向的,但对于大多数PD-和资产相关性范围而言,在实践中,资产相关性被系统性地低估了。这两种效应叠加在一起,如果另外假设资产相关性和PD之间存在负相关,则误差往往会变得更大,这在许多情况下是合理的,并且与巴塞尔RWA公式一致。本文认为,所描述的一般非同质性效应是从违约数据测量的资产相关性往往低于从资产价值数据得出的资产相关性的原因之一。
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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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