Information-Theoretic Limits of Matrix Completion
Erwin Riegler, David Stotz, and Helmut B\"olcskei

TL;DR
This paper develops an information-theoretic framework for matrix completion that applies to general matrices with low description complexity, establishing measurement bounds for successful recovery under broad conditions.
Contribution
It introduces a novel information-theoretic approach to matrix completion that extends beyond low-rank matrices to those with low description complexity, using rank-one measurements.
Findings
Recovery with high probability from fewer measurements than matrix dimensions.
Rank-one measurements are effective and computationally efficient.
Exact bounds for low-rank matrix recovery are established.
Abstract
We propose an information-theoretic framework for matrix completion. The theory goes beyond the low-rank structure and applies to general matrices of "low description complexity". Specifically, we consider random matrices of arbitrary distribution (continuous, discrete, discrete-continuous mixture, or even singular). With an -support set of , i.e., , and denoting the lower Minkowski dimension of , we show that trace inner product measurements with measurement matrices , suffice to recover with probability of error at most . The result holds for Lebesgue a.a. and does not need incoherence between the and the…
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