矩约束下风险价值和预期不足的经验似然估计

O. Linton, Xiaolu Zhao
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引用次数: 0

摘要

本文通过充分挖掘GARCH框架中的一阶矩和二阶矩信息,提出了一种有效的风险测度估计方法。提出了一种基于经验似然加权分布估计量反演的分位数估计量。结果表明,新的分位数估计器比简单的经验分位数估计器和基于归一化残差的分位数估计器都更有效。我们证明了同样的结论也适用于条件期望缺口的估计。我们发现这些条件风险值和期望缺口的估计量是渐近混合正态的。提供模拟证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical Likelihood Estimation of Value-at-Risk and Expected Shortfall With Moment Constraints
This paper proposes efficient estimation of risk measures by fully exploring the first and second moment information in a GARCH framework. We propose a quantile estimator based on inverting an empirical likelihood weighted distribution estimator. It is found that the new quantile estimator is uniformly more efficient than the simple empirical quantile and a quantile estimator based on normalized residuals. We show that the same conclusion applies to the estimation of conditional Expected Shortfall. We find that these proposed estimators for conditional Value-at-Risk and expected shortfall are asymptotically mixed normal. Simulation evidence provided.
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