English

Beyond Low Rank: A Data-Adaptive Tensor Completion Method

Computer Vision and Pattern Recognition 2017-08-04 v1

Abstract

Low rank tensor representation underpins much of recent progress in tensor completion. In real applications, however, this approach is confronted with two challenging problems, namely (1) tensor rank determination; (2) handling real tensor data which only approximately fulfils the low-rank requirement. To address these two issues, we develop a data-adaptive tensor completion model which explicitly represents both the low-rank and non-low-rank structures in a latent tensor. Representing the non-low-rank structure separately from the low-rank one allows priors which capture the important distinctions between the two, thus enabling more accurate modelling, and ultimately, completion. Through defining a new tensor rank, we develop a sparsity induced prior for the low-rank structure, with which the tensor rank can be automatically determined. The prior for the non-low-rank structure is established based on a mixture of Gaussians which is shown to be flexible enough, and powerful enough, to inform the completion process for a variety of real tensor data. With these two priors, we develop a Bayesian minimum mean squared error estimate (MMSE) framework for inference which provides the posterior mean of missing entries as well as their uncertainty. Compared with the state-of-the-art methods in various applications, the proposed model produces more accurate completion results.

Keywords

Cite

@article{arxiv.1708.01008,
  title  = {Beyond Low Rank: A Data-Adaptive Tensor Completion Method},
  author = {Lei Zhang and Wei Wei and Qinfeng Shi and Chunhua Shen and Anton van den Hengel and Yanning Zhang},
  journal= {arXiv preprint arXiv:1708.01008},
  year   = {2017}
}

Comments

14 pages, 5 figures