Low solution rank of the matrix LASSO under RIP with consequences for rank-constrained algorithms

成果类型:
Article; Early Access
署名作者:
McRae, Andrew D.
署名单位:
Swiss Federal Institutes of Technology Domain; Ecole Polytechnique Federale de Lausanne
刊物名称:
MATHEMATICAL PROGRAMMING
ISSN/ISSBN:
0025-5610
DOI:
10.1007/s10107-025-02236-x
发表日期:
2025
关键词:
global optimization critical-points RECOVERY estimators bounds rates
摘要:
We show that solutions to the popular convex matrix LASSO problem (nuclear-norm-penalized linear least-squares) have low rank under similar assumptions as required by classical low-rank matrix sensing error bounds. Although the purpose of the nuclear norm penalty is to promote low solution rank, a proof has not yet (to our knowledge) been provided outside very specific circumstances. Furthermore, we show that this result has significant theoretical consequences for nonconvex rank-constrained optimization approaches. Specifically, we show that if (a) the ground truth matrix has low rank, (b) the (linear) measurement operator has the matrix restricted isometry property (RIP), and (c) the measurement error is small enough relative to the nuclear norm penalty, then the LASSO solution is unique and has rank (approximately) bounded by that of the ground truth. From this, we show (a) that a low-rank-projected proximal gradient descent algorithm will converge linearly to the unique LASSO solution from any initialization, and (b) that the nonconvex landscape of the low-rank Burer-Monteiro-factored problem formulation is benign in the sense that all second-order critical points are globally optimal and yield the unique LASSO solution.
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