An analysis of convex relaxations for MAP estimation of discrete MRFs

Kumar MP, Kolmogorov V, Torr P. 2009. An analysis of convex relaxations for MAP estimation of discrete MRFs. Journal of Machine Learning Research. 10, 71–106.

Journal Article | Published
Author
Kumar, M Pawan; Kolmogorov, VladimirISTA; Torr, Philip H
Abstract
The problem of obtaining the maximum a posteriori estimate of a general discrete Markov random field (i.e., a Markov random field defined using a discrete set of labels) is known to be NP-hard. However, due to its central importance in many applications, several approximation algorithms have been proposed in the literature. In this paper, we present an analysis of three such algorithms based on convex relaxations: (i) LP-S: the linear programming (LP) relaxation proposed by Schlesinger (1976) for a special case and independently in Chekuri et al. (2001), Koster et al. (1998), and Wainwright et al. (2005) for the general case; (ii) QP-RL: the quadratic programming (QP) relaxation of Ravikumar and Lafferty (2006); and (iii) SOCP-MS: the second order cone programming (SOCP) relaxation first proposed by Muramatsu and Suzuki (2003) for two label problems and later extended by Kumar et al. (2006) for a general label set. We show that the SOCP-MS and the QP-RL relaxations are equivalent. Furthermore, we prove that despite the flexibility in the form of the constraints/objective function offered by QP and SOCP, the LP-S relaxation strictly dominates (i.e., provides a better approximation than) QP-RL and SOCP-MS. We generalize these results by defining a large class of SOCP (and equivalent QP) relaxations which is dominated by the LP-S relaxation. Based on these results we propose some novel SOCP relaxations which define constraints using random variables that form cycles or cliques in the graphical model representation of the random field. Using some examples we show that the new SOCP relaxations strictly dominate the previous approaches.
Publishing Year
Date Published
2009-01-01
Journal Title
Journal of Machine Learning Research
Volume
10
Page
71 - 106
IST-REx-ID

Cite this

Kumar MP, Kolmogorov V, Torr P. An analysis of convex relaxations for MAP estimation of discrete MRFs. Journal of Machine Learning Research. 2009;10:71-106.
Kumar, M. P., Kolmogorov, V., & Torr, P. (2009). An analysis of convex relaxations for MAP estimation of discrete MRFs. Journal of Machine Learning Research. Microtome Publishing.
Kumar, M Pawan, Vladimir Kolmogorov, and Philip Torr. “An Analysis of Convex Relaxations for MAP Estimation of Discrete MRFs.” Journal of Machine Learning Research. Microtome Publishing, 2009.
M. P. Kumar, V. Kolmogorov, and P. Torr, “An analysis of convex relaxations for MAP estimation of discrete MRFs,” Journal of Machine Learning Research, vol. 10. Microtome Publishing, pp. 71–106, 2009.
Kumar MP, Kolmogorov V, Torr P. 2009. An analysis of convex relaxations for MAP estimation of discrete MRFs. Journal of Machine Learning Research. 10, 71–106.
Kumar, M. Pawan, et al. “An Analysis of Convex Relaxations for MAP Estimation of Discrete MRFs.” Journal of Machine Learning Research, vol. 10, Microtome Publishing, 2009, pp. 71–106.
All files available under the following license(s):
Copyright Statement:
This Item is protected by copyright and/or related rights. [...]

Link(s) to Main File(s)
Access Level
OA Open Access

Export

Marked Publications

Open Data ISTA Research Explorer

Search this title in

Google Scholar