高斯从属长程相关过程的最优块重采样

Qihao Zhang, S. Lahiri, D. Nordman
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引用次数: 2

摘要

基于块的重采样估计器已被深入研究用于弱依赖时间过程,这有助于通知实现(例如,最佳块大小)。然而,对于重采样性能和块大小在强依赖性或长期依赖性下的影响知之甚少。为了建立块选择的指导原则,我们考虑了一类由平稳长记忆高斯序列变换形成的强相关时间过程,并检查了基于块的原型样本均值方差的重采样估计;还考虑了一般统计函数的扩展。与弱相关性不同,强相关性下的重采样估计器的性质复杂地取决于时间序列(超过Hermite秩)的非线性性质以及长记忆系数和块大小。此外,直觉上通常认为,在强依赖性下的最佳块大小应该大于在弱依赖性下已知的最佳顺序$O(n^{1/2})$。这种直觉在很大程度上是不正确的,尽管在许多情况下,由于长记忆时间序列中的非线性,块顺序$O(n^{1/2})$可能是合理的(甚至是最优的)。虽然在长期依赖下,最优块大小比在短期依赖下更复杂,但我们提供了一致的数据驱动块选择规则,并且数值研究表明,块选择指南在其他基于长记忆时间序列的块问题中表现良好,例如分布估计和测试Hermite秩的策略。
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On optimal block resampling for Gaussian-subordinated long-range dependent processes
Block-based resampling estimators have been intensively investigated for weakly dependent time processes, which has helped to inform implementation (e.g., best block sizes). However, little is known about resampling performance and block sizes under strong or long-range dependence. To establish guideposts in block selection, we consider a broad class of strongly dependent time processes, formed by a transformation of a stationary long-memory Gaussian series, and examine block-based resampling estimators for the variance of the prototypical sample mean; extensions to general statistical functionals are also considered. Unlike weak dependence, the properties of resampling estimators under strong dependence are shown to depend intricately on the nature of non-linearity in the time series (beyond Hermite ranks) in addition the long-memory coefficient and block size. Additionally, the intuition has often been that optimal block sizes should be larger under strong dependence (say $O(n^{1/2})$ for a sample size $n$) than the optimal order $O(n^{1/3})$ known under weak dependence. This intuition turns out to be largely incorrect, though a block order $O(n^{1/2})$ may be reasonable (and even optimal) in many cases, owing to non-linearity in a long-memory time series. While optimal block sizes are more complex under long-range dependence compared to short-range, we provide a consistent data-driven rule for block selection, and numerical studies illustrate that the guides for block selection perform well in other block-based problems with long-memory time series, such as distribution estimation and strategies for testing Hermite rank.
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