Semi-parametric tensor factor analysis by iteratively projected singular value decomposition

Author:

Chen Elynn Y1,Xia Dong2,Cai Chencheng3,Fan Jianqing45ORCID

Affiliation:

1. Department of Technology, Operations and Statistics, New York University , New York, NY , USA

2. Department of Mathematics, Hong Kong University of Science and Technology , Clear Water Bay, Kowloon, Hong Kong , China

3. Department of Mathematics and Statistics, Washington State University , Pullman, WA , USA

4. School of Data Science, Fudan University , Shanghai , China

5. Department of Operations Research and Financial Engineering, Princeton University , Princeton, NJ , USA

Abstract

Abstract This paper introduces a general framework of Semi-parametric TEnsor Factor Analysis (STEFA) that focuses on the methodology and theory of low-rank tensor decomposition with auxiliary covariates. Semi-parametric TEnsor Factor Analysis models extend tensor factor models by incorporating auxiliary covariates in the loading matrices. We propose an algorithm of iteratively projected singular value decomposition (IP-SVD) for the semi-parametric estimation. It iteratively projects tensor data onto the linear space spanned by the basis functions of covariates and applies singular value decomposition on matricized tensors over each mode. We establish the convergence rates of the loading matrices and the core tensor factor. The theoretical results only require a sub-exponential noise distribution, which is weaker than the assumption of sub-Gaussian tail of noise in the literature. Compared with the Tucker decomposition, IP-SVD yields more accurate estimators with a faster convergence rate. Besides estimation, we propose several prediction methods with new covariates based on the STEFA model. On both synthetic and real tensor data, we demonstrate the efficacy of the STEFA model and the IP-SVD algorithm on both the estimation and prediction tasks.

Funder

RGC

NSF

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

Reference61 articles.

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