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Sample quantile analysis for long-memory stochastic volatility models

机译:长记忆随机波动率模型的样本分位数分析

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This study investigates asymptotic properties of sample quantile estimates in the context of long-memory stochastic volatility models in which the latent volatility component is an exponential transformation of a linear long-memory time series. We focus on the least absolute deviation quantile estimator and show that while the underlying process is a sequence of stationary martingale differences, the estimation errors are asymptotically normal with the convergence rate which is slower than root n and determined by the dependence parameter of the volatility sequence. A non-parametric resampling method is employed to estimate the normalizing constants by which the confidence intervals are constructed. To demonstrate the methodology, we conduct a simulation study as well as an empirical analysis of the Value-at-Risk estimate of the S&P 500 daily returns. Both are consistent with the theoretical findings and provide clear evidence that the coverage probabilities of confidence intervals for the quantile estimate are severely biased if the strong dependence of the unobserved volatility sequence is ignored. (C) 2015 Elsevier B.V. All rights reserved.
机译:这项研究在长记忆随机波动率模型的背景下调查样本分位数估计的渐近性质,其中潜在波动率分量是线性长记忆时间序列的指数变换。我们关注于最小绝对偏差分位数估计器,它表明虽然基本过程是一系列固定mar差,但估计误差是渐近正态的,收敛速度比根n慢,并且由波动率序列的依赖参数确定。采用非参数重采样方法来估计用于构造置信区间的归一化常数。为了证明该方法,我们对标准普尔500每日收益的风险价值估算进行了模拟研究和实证分析。两者均与理论结果一致,并提供了明确的证据,如果忽略了未观察到的波动率序列的强相关性,则分位数估计的置信区间的覆盖概率将严重偏差。 (C)2015 Elsevier B.V.保留所有权利。

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