We study data-driven least squares (LS) problems with semidefinite (SD) constraints and derive finite-sample guarantees on the spectrum of their optimal solutions when these constraints are relaxed. In particular, we provide a high confidence bound allowing one to solve a simpler program in place of the full SDLS problem, while ensuring that the eigenvalues of the resulting solution are ε-close of those enforced by the SD constraints. The developed certificate, which consistently shrinks as the number of data increases, turns out to be easy-to-compute, distribution-free, and only requires independent and identically distributed samples. Moreover, when the SDLS is used to learn an unknown quadratic function, we establish bounds on the error between a gradient descent iterate minimizing the surrogate cost obtained with no SD constraints and the true minimizer.

Concentration inequalities for semidefinite least squares based on data / Fabiani, Filippo; Simonetto, Andrea. - In: IEEE SIGNAL PROCESSING LETTERS. - ISSN 1070-9908. - 33:(2026), pp. 326-330. [10.1109/LSP.2025.3643385]

Concentration inequalities for semidefinite least squares based on data

Filippo Fabiani
;
2026

Abstract

We study data-driven least squares (LS) problems with semidefinite (SD) constraints and derive finite-sample guarantees on the spectrum of their optimal solutions when these constraints are relaxed. In particular, we provide a high confidence bound allowing one to solve a simpler program in place of the full SDLS problem, while ensuring that the eigenvalues of the resulting solution are ε-close of those enforced by the SD constraints. The developed certificate, which consistently shrinks as the number of data increases, turns out to be easy-to-compute, distribution-free, and only requires independent and identically distributed samples. Moreover, when the SDLS is used to learn an unknown quadratic function, we establish bounds on the error between a gradient descent iterate minimizing the surrogate cost obtained with no SD constraints and the true minimizer.
2026
Noise measurement, Covariance matrices, Linear matrix inequalities, Vectors, Symmetric matrices, Fitting, Eigenvalues and eigenfunctions, Costs, Kernel, Transforms, Data-driven modeling, Optimization, Machine learning
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11771/37978
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