@techreport{d6fb9c1740d3448f9fdcfe99c57d3473,
title = "Reduced-Rank Matrix Autoregressive Models: A Medium N Approach",
abstract = "Reduced-rank regressions are powerful tools used to identify co-movements within economic time series. However, this task becomes challenging when we observe matrix-valued time series, where each dimension may have a different co-movement structure. We propose reduced-rank regressions with a tensor structure for the coefficient matrix to provide new insights into co-movements within and between the dimensions of matrix-valued time series. Moreover, we relate the co-movement structures to two commonly used reduced-rank models, namely the serial correlation common feature and the index model. Two empirical applications involving U.S.\ states and economic indicators for the Eurozone and North American countries illustrate how our new tools identify co-movements.",
keywords = "co-movements, tensor models, low rank, Tucker decomposition, common right and left null spaces, common features",
author = "Alain Hecq and Ivan Ricardo and Ines Wilms",
note = "Data: Macroeconomic indicators for various countries: https://data-explorer.oecd.org/ Coincident and Leading Indexes among U.S. States: https://www.philadelphiafed.org/surveys-and-data/regional-economic-analysis/",
year = "2024",
doi = "10.48550/arXiv.2407.07973",
language = "English",
series = "arXiv.org",
number = "2407.07973",
publisher = "Cornell University - arXiv",
address = "United States",
type = "WorkingPaper",
institution = "Cornell University - arXiv",
}