Elliptically-Contoured Tensor-variate Distributions with Application to Image Learning

Author:

Llosa-Vite Carlos1ORCID,Maitra Ranjan2ORCID

Affiliation:

1. Statistical Sciences, Sandia National Laboratories, USA

2. Department of Statistics, Iowa State University, USA

Abstract

Statistical analysis of tensor-valued data has largely used the tensor-variate normal (TVN) distribution that may be inadequate for data arising from distributions with heavier or lighter tails. We study a general family of elliptically contoured (EC) tensor-variate distributions and derive its characterizations, moments, marginal and conditional distributions. We describe procedures for maximum likelihood estimation from data that are (1) uncorrelated draws from an EC distribution, (2) from a scale mixture of the TVN distribution, and (3) from an underlying but unknown EC distribution, for which we extend Tyler’s robust estimator. A detailed simulation study highlights the benefits of choosing an EC distribution over the TVN for heavier-tailed data. We develop tensor-variate classification rules using discriminant analysis and EC errors and show that they better predict cats and dogs from images in the Animal Faces-HQ dataset than the TVN-based rules. A novel tensor-on-tensor regression and tensor-variate analysis of variance (TANOVA) framework under EC errors is also demonstrated to better characterize gender, age and ethnic origin than the usual TVN-based TANOVA in the celebrated Labeled Faces of the Wild dataset.

Publisher

Association for Computing Machinery (ACM)

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4. Scale Mixtures of Normal Distributions. Journal of the Royal Statistical Society;Andrews D. F.;Series B (Methodological),1974

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