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Nonparametric Spectral Analysis of Multivariate Time Series
Annual Review of Statistics and Its Application ( IF 7.9 ) Pub Date : 2020-03-09 , DOI: 10.1146/annurev-statistics-031219-041138
Rainer von Sachs 1
Affiliation  

Spectral analysis of multivariate time series has been an active field of methodological and applied statistics for the past 50 years. Since the success of the fast Fourier transform algorithm, the analysis of serial auto- and cross-correlation in the frequency domain has helped us to understand the dynamics in many serially correlated data without necessarily needing to develop complex parametric models. In this work, we give a nonexhaustive review of the mostly recent nonparametric methods of spectral analysis of multivariate time series, with an emphasis on model-based approaches. We try to give insights into a variety of complimentary approaches for standard and less standard situations (such as nonstationary, replicated, or high-dimensional time series), discuss estimation aspects (such as smoothing over frequency), and include some examples stemming from life science applications (such as brain data).

中文翻译:


多元时间序列的非参数频谱分析

在过去的50年中,多元时间序列的频谱分析一直是方法学和应用统计的活跃领域。自从快速傅里叶变换算法获得成功以来,对频域中串行自相关和互相关的分析已帮助我们了解了许多串行相关数据的动态,而不必开发复杂的参数模型。在这项工作中,我们对多元时间序列频谱分析的最新非参数方法进行了详尽的介绍,重点是基于模型的方法。我们尝试提供针对标准和次标准情况(例如非平稳,重复或高维时间序列)的各种互补方法的见解,讨论估计方面(例如,频率平滑),

更新日期:2020-03-09
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