Contents Online
Statistics and Its Interface
Volume 17 (2024)
Number 2
Special issue on statistical learning of tensor data
Robust and covariance-assisted tensor response regression
Pages: 291 – 303
DOI: https://dx.doi.org/10.4310/SII.2024.v17.n2.a10
Authors
Abstract
Tensor data analysis is gaining increasing popularity in modern multivariate statistics. When analyzing real-world tensor data, many existing tensor estimation approaches are sensitive to heavy-tailed data and outliers, in addition to the apparent high-dimensionality. In this article, we develop a robust and covariance-assisted tensor response regression model based on a recently proposed tensor t‑distribution to address these issues in tensor data. This model assumes that the tensor regression coefficient has a low-rank structure that can be learned more effectively using the additional covariance information. This enables a fast and robust decomposition-based estimation method. Theoretical analysis and numerical experiments demonstrate the superior performance of our approach. By addressing the heavy-tail, high-order, and high-dimensional issues, our work contributes to robust and effective estimation methods for tensor response regression, with broad applicability in various domains.
Keywords
dimension reduction, envelope method, t-distributions, tensor decomposition
Research for this paper was supported in part by grants CCF-1908969 and DMS-2053697 from the U.S. National Science Foundation.
Received 29 September 2022
Published 1 February 2024