Constrained Factor Models for High-Dimensional Matrix-Variate Time Series
Elynn Y. Chen, Ruey S. Tsay, Rong Chen

TL;DR
This paper introduces a flexible framework for constrained matrix factor models in high-dimensional time series, improving interpretability, efficiency, and accuracy by incorporating prior knowledge and domain constraints.
Contribution
It develops constrained, multi-term, and partially constrained matrix factor models with efficient estimation and faster convergence rates, enhancing analysis of high-dimensional matrix-variate time series.
Findings
Constrained models outperform unconstrained ones in variance explanation.
Faster convergence rates for constrained factor loadings.
Simulation studies confirm finite-sample effectiveness.
Abstract
High-dimensional matrix-variate time series data are becoming widely available in many scientific fields, such as economics, biology, and meteorology. To achieve significant dimension reduction while preserving the intrinsic matrix structure and temporal dynamics in such data, Wang et al. (2017) proposed a matrix factor model that is shown to provide effective analysis. In this paper, we establish a general framework for incorporating domain or prior knowledge in the matrix factor model through linear constraints. The proposed framework is shown to be useful in achieving parsimonious parameterization, facilitating interpretation of the latent matrix factor, and identifying specific factors of interest. Fully utilizing the prior-knowledge-induced constraints results in more efficient and accurate modeling, inference, dimension reduction as well as a clear and better interpretation of the…
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