Efficient Over-parameterized Matrix Sensing from Noisy Measurements via Alternating Preconditioned Gradient Descent
Zhiyu Liu, Zhi Han, Yandong Tang, Shaojie Tang, Yao Wang

TL;DR
This paper introduces an alternating preconditioned gradient descent algorithm for noisy over-parameterized matrix sensing, achieving faster convergence without tuning damping parameters, with theoretical guarantees and extensive empirical validation.
Contribution
We propose APGD, a novel algorithm that improves convergence speed and robustness in over-parameterized matrix sensing without requiring damping parameter tuning.
Findings
APGD converges linearly to a near-optimal error.
APGD outperforms existing methods in convergence speed and computation time.
Theoretical guarantees extend to various low-rank matrix estimation tasks.
Abstract
We consider the noisy matrix sensing problem in the over-parameterization setting, where the estimated rank is larger than the true rank of the target matrix . Specifically, our main objective is to recover a matrix with rank from noisy measurements using an over-parameterized factorization , where and , with being unknown. Recently, preconditioning methods have been proposed to accelerate the convergence of matrix sensing problem compared to vanilla gradient descent, incorporating preconditioning terms and into the original gradient. However, these methods require careful tuning of the damping parameter and…
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Taxonomy
TopicsGeophysical and Geoelectrical Methods · Electrical and Bioimpedance Tomography · Sparse and Compressive Sensing Techniques
MethodsPrincipal Components Analysis
