New Hardness Results for Low-Rank Matrix Completion
Dror Chawin, Ishay Haviv

TL;DR
This paper establishes new NP-hardness results for low-rank matrix completion problems, demonstrating computational difficulty even under structural constraints like positive semi-definiteness and bounded infinity norm.
Contribution
It extends previous hardness results by providing stronger NP-hardness proofs for low-rank matrix completion with additive error and norm constraints, using novel graph representation techniques.
Findings
NP-hardness for positive semi-definite matrix completion with additive error
NP-hardness for matrix completion with bounded infinity norm
Introduction of nearly orthonormal graph representations and line digraphs
Abstract
The low-rank matrix completion problem asks whether a given real matrix with missing values can be completed so that the resulting matrix has low rank or is close to a low-rank matrix. The completed matrix is often required to satisfy additional structural constraints, such as positive semi-definiteness or a bounded infinity norm. The problem arises in various research fields, including machine learning, statistics, and theoretical computer science, and has broad real-world applications. This paper presents new -hardness results for low-rank matrix completion problems. We show that for every sufficiently large integer and any real number , given a partial matrix with exposed values of magnitude at most that admits a positive semi-definite completion of rank , it is -hard to find a positive…
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