Open AccessProceedings Article
Approximate inference and constrained optimization
Tom Heskes,Kees Albers,Bert Kappen +2 more
- 07 Aug 2002
- pp 313-320
TL;DR: In this article, the authors describe a class of algorithms that solve this typically non-convex constrained minimization problem through a sequence of convex constrained minimumizations of upper bounds on the Kikuchi free energy.
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Abstract: Loopy and generalized belief propagation are popular algorithms for approximate inference in Markov random fields and Bayesian networks. Fixed points of these algorithms correspond to extrema of the Bethe and Kikuchi free energy (Yedidia et al., 2001). However, belief propagation does not always converge, which motivates approaches that explicitly minimize the Kikuchi/Bethe free energy, such as CCCP (Yuille, 2002) and UPS (Teh and Welling, 2002). Here we describe a class of algorithms that solves this typically non-convex constrained minimization problem through a sequence of convex constrained minimizations of upper bounds on the Kikuchi free energy. Intuitively one would expect tighter bounds to lead to faster algorithms, which is indeed convincingly demonstrated in our simulations. Several ideas are applied to obtain tight convex bounds that yield dramatic speed-ups over CCCP.
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References
•Proceedings Article
Algorithms for Non-negative Matrix Factorization
Daniel D. Lee,H. Sebastian Seung +1 more
- 01 Jan 2000
TL;DR: Two different multiplicative algorithms for non-negative matrix factorization are analyzed and one algorithm can be shown to minimize the conventional least squares error while the other minimizes the generalized Kullback-Leibler divergence.
A view of the EM algorithm that justifies incremental, sparse, and other variants
Radford M. Neal,Geoffrey E. Hinton +1 more
- 26 Mar 1998
TL;DR: In this paper, an incremental variant of the EM algorithm is proposed, in which the distribution for only one of the unobserved variables is recalculated in each E step, which is shown empirically to give faster convergence in a mixture estimation problem.
2.6K
Constructing free-energy approximations and generalized belief propagation algorithms
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A Theory of Cooperative Phenomena
TL;DR: In this article, a new method of approximation for order-disorder phenomena is developed for the one-dimensional Ising lattice and an improved treatment for the three-dimensional simple cubic Ising model is given.
1.9K
Constructing free-energy approximations and generalized belief propagation algorithms
TL;DR: This work explains how to obtain region-based free energy approximations that improve the Bethe approximation, and corresponding generalized belief propagation (GBP) algorithms, and describes empirical results showing that GBP can significantly outperform BP.
1K