Analysis and Applications, volume 21, issue 01, pages 165-191

Implicit regularization with strongly convex bias: Stability and acceleration

Publication typeJournal Article
Publication date2022-11-18
scimago Q1
SJR0.986
CiteScore3.9
Impact factor2
ISSN02195305, 17936861
Applied Mathematics
Analysis
Abstract

Implicit regularization refers to the property of optimization algorithms to be biased towards a certain class of solutions. This property is relevant to understand the behavior of modern machine learning algorithms as well as to design efficient computational methods. While the case where the bias is given by a Euclidean norm is well understood, implicit regularization schemes for more general classes of biases are much less studied. In this work, we consider the case where the bias is given by a strongly convex functional, in the context of linear models, and data possibly corrupted by noise. In particular, we propose and analyze accelerated optimization methods and highlight a trade-off between convergence speed and stability. Theoretical findings are complemented by an empirical analysis on high-dimensional inverse problems in machine learning and signal processing, showing excellent results compared to the state of the art.

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