Solving constrained combinatorial optimization problems via MAP inference is often achieved by introducing extra potential functions for each constraint. This can result in very high order potentials, e.g. a 2nd-order objective with pairwise potentials and a quadratic constraint over all N variables would correspond to an unconstrained objective with an order-N potential. This limits the practicality of such an approach, since inference with high order potentials is tractable only for a few special classes of functions. We propose an approach which is able to solve constrained combinatorial problems using belief propagation without increasing the order. For example, in our scheme the 2nd-order problem above remains order 2 instead of order ...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
Constraint satisfaction and optimization (CSP(O)), probabilistic inference, and data mining are thre...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
Solving constrained combinatorial optimisation problems via MAP inference is often achieved by intro...
We consider the MAP-inference problem for graphical models, which is a valued constraint satisfactio...
We consider the MAP-inference problem for graphical models,which is a valued constraint satisfaction...
In this paper, we propose novel algorithms for inferring the Maximum a Posteriori (MAP) solution of ...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
In general, the problem of computing a maximum a posteriori (MAP) assignment in a Markov random fiel...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
International audienceDecision-making problems can be mod-eled as combinatorial optimization problem...
We consider energy minimization for undirected graphical models, known as MAP- or MLE-inference. We ...
Finding tight bounds on the optimal solution is a critical element of practical solution methods for...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
Constraint satisfaction and optimization (CSP(O)), probabilistic inference, and data mining are thre...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
Solving constrained combinatorial optimisation problems via MAP inference is often achieved by intro...
We consider the MAP-inference problem for graphical models, which is a valued constraint satisfactio...
We consider the MAP-inference problem for graphical models,which is a valued constraint satisfaction...
In this paper, we propose novel algorithms for inferring the Maximum a Posteriori (MAP) solution of ...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
In general, the problem of computing a maximum a posteriori (MAP) assignment in a Markov random fiel...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
International audienceDecision-making problems can be mod-eled as combinatorial optimization problem...
We consider energy minimization for undirected graphical models, known as MAP- or MLE-inference. We ...
Finding tight bounds on the optimal solution is a critical element of practical solution methods for...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
Constraint satisfaction and optimization (CSP(O)), probabilistic inference, and data mining are thre...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...