DocumentCode :
3766012
Title :
Precise high-dimensional error analysis of regularized M-estimators
Author :
Christos Thrampoulidis;Ehsan Abbasi;Babak Hassibi
Author_Institution :
Department of Electrical Engineering, Caltech, Pasadena - 91125, USA
fYear :
2015
Firstpage :
410
Lastpage :
417
Abstract :
A general approach for estimating an unknown signal x0 ∈ ℝn from noisy, linear measurements y = Ax0 + z ∈ ℝm is via solving a so called regularized M-estimator: x̂ := arg minx ℒ(y-Ax)+λf(x). Here, ℒ is a convex loss function, f is a convex (typically, non-smooth) regularizer, and, λ > 0 a regularizer parameter. We analyze the squared error performance ∥x̂ - x022 of such estimators in the high-dimensional proportional regime where m, n → ∞ and m/n → δ. We let the design matrix A have entries iid Gaussian, and, impose minimal and rather mild regularity conditions on the loss function, on the regularizer, and, on the distributions of the noise and of the unknown signal. Under such a generic setting, we show that the squared error converges in probability to a nontrivial limit that is computed by solving four nonlinear equations on four scalar unknowns. We identify a new summary parameter, termed the expected Moreau envelope, which determines how the choice of the loss function and of the regularizer affects the error performance. The result opens the way for answering optimality questions regarding the choice of the loss function, the regularizer, the penalty parameter, etc.
Keywords :
"Optimization","Noise measurement","Convergence","Nonlinear equations","Loss measurement","Inverse problems","Context"
Publisher :
ieee
Conference_Titel :
Communication, Control, and Computing (Allerton), 2015 53rd Annual Allerton Conference on
Type :
conf
DOI :
10.1109/ALLERTON.2015.7447033
Filename :
7447033
Link To Document :
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