The integrated copula spectrum

Yuichi Goto, Tobias Kley, Ria Van Hecke, S. Volgushev, H. Dette, M. Hallin
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Abstract

Frequency domain methods form a ubiquitous part of the statistical tool-box for time series analysis. In recent years, considerable interest has been given to the development of new spectral methodology and tools capturing dynamics in the entire joint distributions and thus avoiding the limitations of classical, L 2 -based spectral methods. Most of the spectral concepts proposed in that literature suffer from one major drawback, though: their estimation re-quires the choice of a smoothing parameter, which has a considerable impact on estimation quality and poses challenges for statistical inference. In this paper, associated with the concept of copula-based spectrum, we introduce the notion of copula spectral distribution function or integrated copula spectrum . This integrated copula spectrum retains the advantages of copula-based spectra but can be estimated without the need for smoothing parameters. We provide such estimators, along with a thorough theoretical analysis, based on a functional central limit theorem, of their asymptotic properties. We leverage these results to test various hypotheses that cannot be addressed by classical spectral methods, such as the lack of time-reversibility or asymmetry in tail dynamics.
积分共轭谱
频域方法构成了时间序列分析统计工具箱中无处不在的一部分。近年来,人们对开发新的光谱方法和工具产生了相当大的兴趣,这些方法和工具可以捕获整个联合分布中的动态,从而避免经典的基于l2的光谱方法的局限性。这些文献中提出的大多数光谱概念都有一个主要缺点:它们的估计需要选择平滑参数,这对估计质量有相当大的影响,并对统计推断提出了挑战。本文结合基于联结谱的概念,引入联结谱分布函数或积分联结谱的概念。这种集成的copula谱保留了基于copula谱的优点,但不需要平滑参数即可进行估计。我们提供了这样的估计量,并基于泛函中心极限定理对它们的渐近性质进行了彻底的理论分析。我们利用这些结果来测试经典光谱方法无法解决的各种假设,例如缺乏时间可逆性或尾部动力学的不对称性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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