Low-tubal-rank Tensor Completion using Alternating Minimization
Xiao-Yang Liu, Shuchin Aeron, Vaneet Aggarwal, Xiaodong Wang

TL;DR
This paper introduces Tubal-Alt-Min, an efficient iterative algorithm for low-tubal-rank tensor completion that guarantees exponential convergence and outperforms existing methods in accuracy and speed.
Contribution
The paper proposes a novel fast alternating minimization algorithm for low-tubal-rank tensor completion with theoretical guarantees and superior empirical performance.
Findings
Guarantees exponential convergence to the global optimum.
Achieves lower recovery error compared to tensor-nuclear norm minimization.
Speeds up convergence and reduces running time significantly.
Abstract
The low-tubal-rank tensor model has been recently proposed for real-world multidimensional data. In this paper, we study the low-tubal-rank tensor completion problem, i.e., to recover a third-order tensor by observing a subset of its elements selected uniformly at random. We propose a fast iterative algorithm, called {\em Tubal-Alt-Min}, that is inspired by a similar approach for low-rank matrix completion. The unknown low-tubal-rank tensor is represented as the product of two much smaller tensors with the low-tubal-rank property being automatically incorporated, and Tubal-Alt-Min alternates between estimating those two tensors using tensor least squares minimization. First, we note that tensor least squares minimization is different from its matrix counterpart and nontrivial as the circular convolution operator of the low-tubal-rank tensor model is intertwined with the sub-sampling…
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Taxonomy
MethodsConvolution
