English

Message-Passing Algorithms: Reparameterizations and Splittings

Information Theory 2014-01-07 v3 Artificial Intelligence math.IT

Abstract

The max-product algorithm, a local message-passing scheme that attempts to compute the most probable assignment (MAP) of a given probability distribution, has been successfully employed as a method of approximate inference for applications arising in coding theory, computer vision, and machine learning. However, the max-product algorithm is not guaranteed to converge to the MAP assignment, and if it does, is not guaranteed to recover the MAP assignment. Alternative convergent message-passing schemes have been proposed to overcome these difficulties. This work provides a systematic study of such message-passing algorithms that extends the known results by exhibiting new sufficient conditions for convergence to local and/or global optima, providing a combinatorial characterization of these optima based on graph covers, and describing a new convergent and correct message-passing algorithm whose derivation unifies many of the known convergent message-passing algorithms. While convergent and correct message-passing algorithms represent a step forward in the analysis of max-product style message-passing algorithms, the conditions needed to guarantee convergence to a global optimum can be too restrictive in both theory and practice. This limitation of convergent and correct message-passing schemes is characterized by graph covers and illustrated by example.

Keywords

Cite

@article{arxiv.1002.3239,
  title  = {Message-Passing Algorithms: Reparameterizations and Splittings},
  author = {Nicholas Ruozzi and Sekhar Tatikonda},
  journal= {arXiv preprint arXiv:1002.3239},
  year   = {2014}
}

Comments

A complete rework and expansion of the previous versions

R2 v1 2026-06-21T14:47:51.093Z