Variational Algorithms for Marginal MAP
Machine Learning
2013-02-28 v1 Artificial Intelligence
Information Theory
math.IT
Machine Learning
Abstract
Marginal MAP problems are notoriously difficult tasks for graphical models. We derive a general variational framework for solving marginal MAP problems, in which we apply analogues of the Bethe, tree-reweighted, and mean field approximations. We then derive a "mixed" message passing algorithm and a convergent alternative using CCCP to solve the BP-type approximations. Theoretically, we give conditions under which the decoded solution is a global or local optimum, and obtain novel upper bounds on solutions. Experimentally we demonstrate that our algorithms outperform related approaches. We also show that EM and variational EM comprise a special case of our framework.
Cite
@article{arxiv.1202.3742,
title = {Variational Algorithms for Marginal MAP},
author = {Qiang Liu and Alexander T. Ihler},
journal= {arXiv preprint arXiv:1202.3742},
year = {2013}
}
Comments
conference version. full journal version is at arXiv:1302.6584