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ESTIMATION OF JUMP TAILS

机译:跳跃尾巴的估计

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We propose a new and flexible nonparametric framework for estimating the jump tails of Ito semimartingale processes. The approach is based on a relatively simple-to-implement set of estimating equations associated with the compensator for the jump measure, or its intensity, that only utilizes the weak assumption of regular variation in the jump tails, along with in-fill asymptotic arguments for directly estimating the "large" jumps. The procedure assumes that the large-sized jumps are identically distributed, but otherwise allows for very general dynamic dependencies in jump occurrences, and, importantly, does not restrict the behavior of the "small" jumps or the continuous part of the process and the temporal variation in the stochastic volatility.On implementing the new estimation procedure with actual high-frequency data for the s&p 500 aggregate market portfolio, we find strong evidence for richer and more complex dynamic dependencies in the jump tails than hitherto entertained in the literature.
机译:我们提出了一个新的灵活的非参数框架,用于估计伊藤半mart割过程的尾巴。该方法基于与跳跃量度补偿器或其强度相关的一组相对易于实现的估计方程,该估计方程仅利用跳跃尾部规则变化的弱假设以及填充渐近参数直接估算“大”跳跃。该过程假定大型跳转的分布是相同的,但否则会在跳转发生时考虑到非常普遍的动态依赖性,并且重要的是,不限制“小”跳转的行为或过程和时间连续部分的行为。在使用标普500总体市场投资组合的实际高频数据执行新的估算程序时,我们发现有力的证据表明,跳尾中的动态依存关系比文献中迄今所得出的更为丰富和复杂。

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