arXiv Analytics

Sign in

arXiv:1001.3448 [cs.IT]AbstractReferencesReviewsResources

The dynamics of message passing on dense graphs, with applications to compressed sensing

Mohsen Bayati, Andrea Montanari

Published 2010-01-20, updated 2011-01-27Version 4

Approximate message passing algorithms proved to be extremely effective in reconstructing sparse signals from a small number of incoherent linear measurements. Extensive numerical experiments further showed that their dynamics is accurately tracked by a simple one-dimensional iteration termed state evolution. In this paper we provide the first rigorous foundation to state evolution. We prove that indeed it holds asymptotically in the large system limit for sensing matrices with independent and identically distributed gaussian entries. While our focus is on message passing algorithms for compressed sensing, the analysis extends beyond this setting, to a general class of algorithms on dense graphs. In this context, state evolution plays the role that density evolution has for sparse graphs. The proof technique is fundamentally different from the standard approach to density evolution, in that it copes with large number of short loops in the underlying factor graph. It relies instead on a conditioning technique recently developed by Erwin Bolthausen in the context of spin glass theory.

Comments: 41 pages
Journal: IEEE Transactions on Information Theory, Vol 57, Issue 2 pp. 764-785, 2011
Categories: cs.IT, cs.LG, math.IT, math.ST, stat.TH
Related articles: Most relevant | Search more
arXiv:1203.3815 [cs.IT] (Published 2012-03-15, updated 2012-08-28)
Theory and Applications of Compressed Sensing
arXiv:1505.02368 [cs.IT] (Published 2015-05-10)
Solutions to Integrals Involving the Marcum Q-Function and Applications
arXiv:0903.2232 [cs.IT] (Published 2009-03-12, updated 2012-01-31)
On the Iterative Decoding of High-Rate LDPC Codes With Applications in Compressed Sensing