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Rank 2r2r2r iterative least squares: efficient recovery of ill-conditioned low rank matrices from few entries

5 February 2020
Jonathan Bauch
B. Nadler
Pini Zilber
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Abstract

We present a new, simple and computationally efficient iterative method for low rank matrix completion. Our method is inspired by the class of factorization-type iterative algorithms, but substantially differs from them in the way the problem is cast. Precisely, given a target rank rrr, instead of optimizing on the manifold of rank rrr matrices, we allow our interim estimated matrix to have a specific over-parametrized rank 2r2r2r structure. Our algorithm, denoted R2RILS for rank 2r2r2r iterative least squares, has low memory requirements, and at each iteration it solves a computationally cheap sparse least-squares problem. We motivate our algorithm by its theoretical analysis for the simplified case of a rank-1 matrix. Empirically, R2RILS is able to recover ill conditioned low rank matrices from very few observations -- near the information limit, and it is stable to additive noise.

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