Submodular extensions of an energy function can be used to efficiently compute approximate marginals via variational inference. The accuracy of the marginals depends crucially on the quality of the submodular extension. To identify the best possible extension, we show an equivalence between the submodular extensions of the energy and the objective functions of linear programming (LP) relaxations for the corresponding MAP estimation problem. This allows us to (i) establish the worst-case optimality of the submodular extension for Potts model used in the literature; (ii) identify the worst-case optimal submodular extension for the more general class of metric labeling; and (iii) efficiently compute the marginals for the widely used dense CRF ...
Abstract. Submodular functions are discrete functions that model laws of diminishing returns and enj...
International audienceWe introduce a globally-convergent algorithm for optimizing the tree-reweighte...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Submodular extensions of an energy function can be used to efficiently compute approximate marginals...
Submodular extensions of an energy function can be used to efficiently compute approximate marginals...
Submodular extensions of an energy function can be used to efficiently compute approximate marginals...
Submodular optimization has found many applications in machine learning and beyond. We carry out the...
© 2018 Curran Associates Inc.All rights reserved. Submodular maximization problems appear in several...
In many applications, one has to actively select among a set of expensive observations before making...
The marginal maximum a posteriori probability (MAP) estimation problem, which cal-culates the mode o...
International audienceIn this paper we address the problem of finding the most probable state of a d...
We study the marginal-MAP problem on graphical models, and present a novel approximation method base...
We present a new method for calculating approximate marginals for probability distributions defined...
The marginal maximum a posteriori probability (MAP) estimation problem, which calculates the mode of...
We consider the problem of approximate Bayesian inference in log-supermodular models. These models e...
Abstract. Submodular functions are discrete functions that model laws of diminishing returns and enj...
International audienceWe introduce a globally-convergent algorithm for optimizing the tree-reweighte...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...
Submodular extensions of an energy function can be used to efficiently compute approximate marginals...
Submodular extensions of an energy function can be used to efficiently compute approximate marginals...
Submodular extensions of an energy function can be used to efficiently compute approximate marginals...
Submodular optimization has found many applications in machine learning and beyond. We carry out the...
© 2018 Curran Associates Inc.All rights reserved. Submodular maximization problems appear in several...
In many applications, one has to actively select among a set of expensive observations before making...
The marginal maximum a posteriori probability (MAP) estimation problem, which cal-culates the mode o...
International audienceIn this paper we address the problem of finding the most probable state of a d...
We study the marginal-MAP problem on graphical models, and present a novel approximation method base...
We present a new method for calculating approximate marginals for probability distributions defined...
The marginal maximum a posteriori probability (MAP) estimation problem, which calculates the mode of...
We consider the problem of approximate Bayesian inference in log-supermodular models. These models e...
Abstract. Submodular functions are discrete functions that model laws of diminishing returns and enj...
International audienceWe introduce a globally-convergent algorithm for optimizing the tree-reweighte...
We consider the problem of inference in a graphical model with binary variables. While in theory it ...