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Principal component analysis for second-order stationary vector time series

Chang, Jinyuan, Guo, Bin and Yao, Qiwei ORCID: 0000-0003-2065-8486 (2018) Principal component analysis for second-order stationary vector time series. Annals of Statistics, 46 (5). pp. 2094-2124. ISSN 0090-5364

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Identification Number: 10.1214/17-AOS1613


We extend the principal component analysis (PCA) to secondorder stationary vector time series in the sense that we seek for a contemporaneous linear transformation for a p-variate time series such that the transformed series is segmented into several lowerdimensional subseries, and those subseries are uncorrelated with each other both contemporaneously and serially. Therefore those lowerdimensional series can be analyzed separately as far as the linear dynamic structure is concerned. Technically it boils down to an eigenanalysis for a positive definite matrix. When p is large, an additional step is required to perform a permutation in terms of either maximum cross-correlations or FDR based on multiple tests. The asymptotic theory is established for both fixed p and diverging p when the sample size n tends to infinity. Numerical experiments with both simulated and real data sets indicate that the proposed method is an effective initial step in analyzing multiple time series data, which leads to substantial dimension reduction in modelling and forecasting high-dimensional linear dynamical structures. Unlike PCA for independent data, there is no guarantee that the required linear transformation exists. When it does not, the proposed method provides an approximate segmentation which leads to the advantages in, for example, forecasting for future values. The method can also be adapted to segment multiple volatility processes

Item Type: Article
Official URL:
Additional Information: © 2017 Institute of Mathematical Statistics
Divisions: Statistics
Subjects: H Social Sciences > HA Statistics
Date Deposited: 24 Aug 2017 12:04
Last Modified: 10 Jul 2024 21:48

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