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Estimation of limiting conditional distributions for the heavy tailed long memory stochastic volatility process

机译:重尾长记忆随机波动过程的极限条件分布估计

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摘要

We consider Stochastic Volatility processes with heavy tails and possible long memory in volatility. We study the limiting conditional distribution of future events given that some present or past event was extreme (i.e. above a level which tends to infinity). Even though extremes of stochastic volatility processes are asymptotically independent (in the sense of extreme value theory), these limiting conditional distributions differ from the i.i.d. case. We introduce estimators of these limiting conditional distributions and study their asymptotic properties. If volatility has long memory, then the rate of convergence and the limiting distribution of the centered estimators can depend on the long memory parameter (Hurst index).
机译:我们考虑尾部沉重的随机波动率过程,以及波动率可能较长的记忆。考虑到某些当前或过去的事件是极端的(即高于趋于无穷大的水平),我们研究了未来事件的有限条件分布。即使随机波动过程的极端是渐近独立的(在极值理论的意义上),这些限制性条件分布也不同于i.d.案件。我们介绍这些极限条件分布的估计量,并研究它们的渐近性质。如果波动性具有较长的记忆力,则收敛速度和居中估计量的有限分布可能取决于较长的记忆力参数(赫斯特指数)。

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