We consider the problem of inference in agraphical model with binary variables. While in theory it is arguably preferable to compute marginal probabilities, in practice researchers often use MAP inference due to the availability of efficient discrete optimization algorithms. We bridge the gap between the two approaches by introducing the Discrete Marginals technique in which approximate marginals are obtained by minimizing an objective function with unary and pair-wise terms over a discretized domain. This allows the use of techniques originally devel-oped for MAP-MRF inference and learning. We explore two ways to set up the objective function - by discretizing the Bethe free energy and by learning it from training data. Experimental resu...
For undirected graphical models, belief propaga-tion often performs remarkably well for approxi-mate...
AbstractInference in Boltzmann machines is NP-hard in general. As a result approximations are often ...
We study the marginal-MAP problem on graphical models, and present a novel approximation method base...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Inference in general Markov random fields (MRFs) is NP-hard, though identifying the maximum a poster...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
Graphical models provide a flexible, powerful and compact way to model relationships between random ...
Inference in general Markov random fields (MRFs) is NP-hard, though identifying the maximum a poster...
We introduce an algorithm, based on the Frank-Wolfe technique (conditional gra-dient), for performin...
Belief propagation may be viewed as a heuristic to optimize the Bethe free energy FB, and often perf...
In this thesis, we use a mean squared error energy approximation for edge deletion in order to make ...
We present a heuristic strategy for marginal MAP (MMAP) queries in graphical models. The algorithm i...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Previously proposed variational techniques for approximate MMAP inference in complex graphical model...
For undirected graphical models, belief propaga-tion often performs remarkably well for approxi-mate...
AbstractInference in Boltzmann machines is NP-hard in general. As a result approximations are often ...
We study the marginal-MAP problem on graphical models, and present a novel approximation method base...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Inference in general Markov random fields (MRFs) is NP-hard, though identifying the maximum a poster...
When belief propagation (BP) converges, it does so to a stationary point of the Bethe free energy F,...
Graphical models provide a flexible, powerful and compact way to model relationships between random ...
Inference in general Markov random fields (MRFs) is NP-hard, though identifying the maximum a poster...
We introduce an algorithm, based on the Frank-Wolfe technique (conditional gra-dient), for performin...
Belief propagation may be viewed as a heuristic to optimize the Bethe free energy FB, and often perf...
In this thesis, we use a mean squared error energy approximation for edge deletion in order to make ...
We present a heuristic strategy for marginal MAP (MMAP) queries in graphical models. The algorithm i...
Numerical optimization and machine learning have had a fruitful relationship, from the perspective o...
Previously proposed variational techniques for approximate MMAP inference in complex graphical model...
For undirected graphical models, belief propaga-tion often performs remarkably well for approxi-mate...
AbstractInference in Boltzmann machines is NP-hard in general. As a result approximations are often ...
We study the marginal-MAP problem on graphical models, and present a novel approximation method base...