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首页> 外文期刊>Advances in applied probability >Limit theorems for long-memory stochastic volatility models with infinite variance: Partial sums and sample covariances
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Limit theorems for long-memory stochastic volatility models with infinite variance: Partial sums and sample covariances

机译:具有无限方差的长记忆随机波动率模型的极限定理:部分和与样本协方差

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摘要

In this paper we extend the existing literature on the asymptotic behavior of the partial sums and the sample covariances of long-memory stochastic volatility models in the case of infinite variance. We also consider models with leverage, for which our results are entirely new in the infinite-variance case. Depending on the interplay between the tail behavior and the intensity of dependence, two types of convergence rates and limiting distributions can arise. In particular, we show that the asymptotic behavior of partial sums is the same for both long memory in stochastic volatility and models with leverage, whereas there is a crucial difference when sample covariances are considered.
机译:在本文中,我们扩展了关于无穷方差情况下长和随机波动率模型的部分和的渐近行为和样本协方差的现有文献。我们还考虑了具有杠杆作用的模型,在无限方差情况下,其结果是全新的。根据尾巴行为和依赖性强度之间的相互作用,会出现两种类型的收敛速度和极限分布。尤其是,我们表明,部分和的渐近行为对于随机波动率的长时记忆和具有杠杆作用的模型都是相同的,而考虑样本协方差时则存在关键差异。

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