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Pré-Publication, Document De Travail Année : 2022

Optimal Estimation of Schatten Norms of a rectangular Matrix

Résumé

We consider the twin problems of estimating the effective rank and the Schatten norms $\|{\bf A}\|_{s}$ of a rectangular $p\times q$ matrix ${\bf A}$ from noisy observations. When $s$ is an even integer, we introduce a polynomial-time estimator of $\|{\bf A}\|_s$ that achieves the minimax rate $(pq)^{1/4}$. Interestingly, this optimal rate does not depend on the underlying rank of the matrix. When $s$ is not an even integer, the optimal rate is much slower. A simple thresholding estimator of the singular values achieves the rate $(q\wedge p)(pq)^{1/4}$, which turns out to be optimal up to a logarithmic multiplicative term. The tight minimax rate is achieved by a more involved polynomial approximation method. This allows us to build estimators for a class of effective rank indices. As a byproduct, we also characterize the minimax rate for estimating the sequence of singular values of a matrix.

Dates et versions

hal-03882348 , version 1 (02-12-2022)

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Solène Thépaut, Nicolas Verzelen. Optimal Estimation of Schatten Norms of a rectangular Matrix. 2022. ⟨hal-03882348⟩
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