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On Unbiased Low-Rank Approximation with Minimum Distortion
Published 12 May 2025 in cs.DS, cs.IT, cs.LG, math.IT, math.PR, math.ST, and stat.TH | (2505.09647v1)
Abstract: We describe an algorithm for sampling a low-rank random matrix $Q$ that best approximates a fixed target matrix $P\in\mathbb{C}{n\times m}$ in the following sense: $Q$ is unbiased, i.e., $\mathbb{E}[Q] = P$; $\mathsf{rank}(Q)\leq r$; and $Q$ minimizes the expected Frobenius norm error $\mathbb{E}|P-Q|_F2$. Our algorithm mirrors the solution to the efficient unbiased sparsification problem for vectors, except applied to the singular components of the matrix $P$. Optimality is proven by showing that our algorithm matches the error from an existing lower bound.
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