Approximate message-passing for convex optimization with non-separable penalties
Abstract
We introduce an iterative optimization scheme for convex objectives consisting of a linear loss and a non-separable penalty, based on the expectation-consistent approximation and the vector approximate message-passing (VAMP) algorithm. Specifically, the penalties we approach are convex on a linear transformation of the variable to be determined, a notable example being total variation (TV). We describe the connection between message-passing algorithms -- typically used for approximate inference -- and proximal methods for optimization, and show that our scheme is, as VAMP, similar in nature to the Peaceman-Rachford splitting, with the important difference that stepsizes are set adaptively. Finally, we benchmark the performance of our VAMP-like iteration in problems where TV penalties are useful, namely classification in task fMRI and reconstruction in tomography, and show faster convergence than that of state-of-the-art approaches such as FISTA and ADMM in most settings.
Cite
@article{arxiv.1809.06304,
title = {Approximate message-passing for convex optimization with non-separable penalties},
author = {Andre Manoel and Florent Krzakala and Gaël Varoquaux and Bertrand Thirion and Lenka Zdeborová},
journal= {arXiv preprint arXiv:1809.06304},
year = {2018}
}
Comments
18 pages, 6 figures