将信用风险分为系统性、部门性和特质性三个部分

A. Novales, Álvaro Chamizo
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引用次数: 7

摘要

我们提供了一种从信用违约互换(CDS)价差中估计全球信用风险因素的方法,这对风险管理非常有用。全球风险因子(GRF)很好地再现了在样本期内影响信贷市场的不同事件。它与标准信贷指数高度相关,但与信贷指数本身相比,它对CDS跨行业价差波动的解释能力要高得多。关于iTraxx的额外信息内容似乎与一些金融利率有关。我们首先使用估计的GRF来分析我们认为的11个部门的系统性程度。之后,我们用它将单个企业的信用风险分解为系统、部门和特质成分,并进行了一些分析,以检验估计的特质成分实际上是特定于企业的。系统和部门因素解释了欧洲工业和金融部门约65%的信贷风险,北美部门约50%的信贷风险,而35%和50%的风险分别属于特殊性质。因此,投资组合多样化有很大的余地。我们还表明,我们的分解使我们能够识别那些信用更难对冲的公司。最后,我们分析了估计风险成分与一些综合风险因素之间的关系,以了解信用风险成分的不同性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Splitting Credit Risk into Systemic, Sectorial and Idiosyncratic Components
We provide a methodology to estimate a global credit risk factor from credit default swap (CDS) spreads that can be very useful for risk management. The global risk factor (GRF) reproduces quite well the different episodes that have affected the credit market over the sample period. It is highly correlated with standard credit indices, but it contains much higher explanatory power for fluctuations in CDS spreads across sectors than the credit indices themselves. The additional information content over iTraxx seems to be related to some financial interest rates. We first use the estimated GRF to analyze the extent to which the eleven sectors we consider are systemic. After that, we use it to split the credit risk of individual firms into systemic, sectorial, and idiosyncratic components, and we perform some analyses to test that the estimated idiosyncratic components are actually firm-specific. The systemic and sectorial components explain around 65% of credit risk in the European industrial and financial sectors and 50% in the North American sectors, while 35% and 50% of risk, respectively, is of an idiosyncratic nature. Thus, there is a significant margin for portfolio diversification. We also show that our decomposition allows us to identify those firms whose credit would be harder to hedge. We end up analyzing the relationship between the estimated components of risk and some synthetic risk factors, in order to learn about the different nature of the credit risk components.
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