Bayesian Markov-Switching Partial Reduced-Rank Regression
Abstract
Reduced-Rank (RR) regression is a powerful dimensionality reduction technique but it overlooks any possible group configuration among the responses by assuming a low-rank structure on the entire coefficient matrix. Moreover, the temporal change of the relations between predictors and responses in time series induce a possibly time-varying grouping structure in the responses. To address these limitations, a Bayesian Markov-switching partial RR (MS-PRR) model is proposed, where the response vector is partitioned in two groups to reflect different complexity of the relationship. A \textit{simple} group assumes a low-rank linear regression, while a \textit{complex} group exploits nonparametric regression via a Gaussian Process. Differently from traditional approaches, group assignments and rank are treated as unknown parameters to be estimated. Then temporal persistence in the regression function is accounted for by a Markov-switching process that drives the changes in the grouping structure and model parameters over time. Full Bayesian inference is preformed via a partially collapsed Gibbs sampler, which allows uncertainty quantification without the need for trans-dimensional moves. Applications to two real-world macroeconomic and commodity data demonstrate the evidence of time-varying grouping and different degrees of complexity both across states and within each state.
Cite
@article{arxiv.2512.17471,
title = {Bayesian Markov-Switching Partial Reduced-Rank Regression},
author = {Maria F. Pintado and Matteo Iacopini and Luca Rossini and Alexander Y. Shestopaloff},
journal= {arXiv preprint arXiv:2512.17471},
year = {2025}
}
Comments
28 pages; Supplement available upon request to the author