大动态协方差模型在投资组合风险价值估计中的实证评价

IF 0.4 4区 经济学 Q4 BUSINESS, FINANCE Journal of Risk Model Validation Pub Date : 2018-12-12 DOI:10.21314/jrmv.2020.221
K. Law, W. Li, P. Yu
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引用次数: 1

摘要

投资组合风险价值(VaR)的估计需要对协方差矩阵进行很好的估计。众所周知,基于历史滚动窗口的样本协方差矩阵是有噪声的,并且对高维总体协方差矩阵的估计很差,为了估计条件投资组合的VaR,我们开发了一个使用动态条件协方差模型的框架,其中使用各种去噪工具来估计无条件协方差目标。我们研究的各种去噪方法包括收缩法、随机矩阵理论方法和正则化方法。我们通过使用各种覆盖测试和损失函数度量来验证模型,并发现协方差目标的去噪处理的选择在衡量动态投资组合VaR估计的准确性方面起着至关重要的作用。在我们对去噪工具的大规模经验评估中,正则化方法似乎在各种覆盖测试和损失函数度量下产生了最差的VaR估计,而收缩方法和随机矩阵理论方法产生了可比较的结果。
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An Empirical Evaluation of Large Dynamic Covariance Models in Portfolio Value-at-Risk Estimation
The estimation of portfolio value-at-risk (VaR) requires a good estimate of the covariance matrix. As it is well known that a sample covariance matrix based on some historical rolling window is noisy and is a poor estimate for the high-dimensional population covariance matrix, to estimate the conditional portfolio VaR we develop a framework using the dynamic conditional covariance model, within which various de-noising tools are employed for the estimation of the unconditional covariance target. Various de-noising treatments in our study include shrinkage methods, random matrix theory methods and regularization methods. We validate the model empirically by using various coverage tests and loss function measures and discover that the choice of de-noising treatments for the covariance target plays a critical role in measuring the accuracy of the dynamic portfolio VaR estimates. In our large-scale empirical evaluation of de-noising tools, the regularization methods seem to produce the poorest VaR estimates under various coverage tests and loss function measures, while the shrinkage methods and the random matrix theory methods produce comparable results.
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来源期刊
CiteScore
1.20
自引率
28.60%
发文量
8
期刊介绍: As monetary institutions rely greatly on economic and financial models for a wide array of applications, model validation has become progressively inventive within the field of risk. The Journal of Risk Model Validation focuses on the implementation and validation of risk models, and aims to provide a greater understanding of key issues including the empirical evaluation of existing models, pitfalls in model validation and the development of new methods. We also publish papers on back-testing. Our main field of application is in credit risk modelling but we are happy to consider any issues of risk model validation for any financial asset class. The Journal of Risk Model Validation considers submissions in the form of research papers on topics including, but not limited to: Empirical model evaluation studies Backtesting studies Stress-testing studies New methods of model validation/backtesting/stress-testing Best practices in model development, deployment, production and maintenance Pitfalls in model validation techniques (all types of risk, forecasting, pricing and rating)
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