Skip to Main Content
1,220
Views
5
CrossRef citations to date
Altmetric

Theory and Methods

Martingale Difference Divergence Matrix and Its Application to Dimension Reduction for Stationary Multivariate Time Series

Pages 216-229
Received 01 May 2016
Accepted author version posted online: 07 Oct 2016
Published online: 08 Aug 2017
 
Translator disclaimer

ABSTRACT

In this article, we introduce a new methodology to perform dimension reduction for a stationary multivariate time series. Our method is motivated by the consideration of optimal prediction and focuses on the reduction of the effective dimension in conditional mean of time series given the past information. In particular, we seek a contemporaneous linear transformation such that the transformed time series has two parts with one part being conditionally mean independent of the past. To achieve this goal, we first propose the so-called martingale difference divergence matrix (MDDM), which can quantify the conditional mean independence of VRp given URq and also encodes the number and form of linear combinations of V that are conditional mean independent of U. Our dimension reduction procedure is based on eigen-decomposition of the cumulative martingale difference divergence matrix, which is an extension of MDDM to the time series context. Interestingly, there is a static factor model representation for our dimension reduction framework and it has subtle difference from the existing static factor model used in the time series literature. Some theory is also provided about the rate of convergence of eigenvalue and eigenvector of the sample cumulative MDDM in the fixed-dimensional setting. Favorable finite sample performance is demonstrated via simulations and real data illustrations in comparison with some existing methods. Supplementary materials for this article are available online.

Acknowledgments

The authors thank Professor Qiwei Yao for providing the temperature data used in this article, and thank Professor David Matteson for providing the GDP dataset and the R code for dynamic orthogonal component analysis. The authors are also grateful to two reviewers and associate editor for constructive comments that led to substantial improvements.

Supplementary Materials

The supplemental materials contain the proofs of Lemma 1, Theorem 1, Theorem 2, and Proposition 1.

Funding

Shao’s research was partially supported by NSF under Grant No. DMS14-07037 and DMS16-07489.

Login options

Purchase * Save for later
Online

Article Purchase 24 hours to view or download: USD 44.00 Add to cart

Issue Purchase 30 days to view or download: USD 268.00 Add to cart

* Local tax will be added as applicable