Open Access
2014 Data-driven shrinkage of the spectral density matrix of a high-dimensional time series
Mark Fiecas, Rainer von Sachs
Electron. J. Statist. 8(2): 2975-3003 (2014). DOI: 10.1214/14-EJS977

Abstract

Time series data obtained from neurophysiological signals is often high-dimensional and the length of the time series is often short relative to the number of dimensions. Thus, it is difficult or sometimes impossible to compute statistics that are based on the spectral density matrix because estimates of these matrices are often numerically unstable. In this work, we discuss the importance of regularization for spectral analysis of high-dimensional time series and propose shrinkage estimation for estimating high-dimensional spectral density matrices. We use and develop the multivariate Time-frequency Toggle (TFT) bootstrap procedure for multivariate time series to estimate the shrinkage parameters, and show that the multivariate TFT bootstrap is theoretically valid. We show via simulations and an fMRI data set that failure to regularize the estimates of the spectral density matrix can yield unstable statistics, and that this can be alleviated by shrinkage estimation.

Citation

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Mark Fiecas. Rainer von Sachs. "Data-driven shrinkage of the spectral density matrix of a high-dimensional time series." Electron. J. Statist. 8 (2) 2975 - 3003, 2014. https://doi.org/10.1214/14-EJS977

Information

Published: 2014
First available in Project Euclid: 15 January 2015

zbMATH: 1320.62121
MathSciNet: MR3301298
Digital Object Identifier: 10.1214/14-EJS977

Keywords: bootstrap , high-dimensional time series , shrinkage estimation , spectral analysis

Rights: Copyright © 2014 The Institute of Mathematical Statistics and the Bernoulli Society

Vol.8 • No. 2 • 2014
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