We introduce an efficient message passing scheme for solving Constraint Satisfaction Prob-lems (CSPs), which uses stochastic perturbation of Belief Propagation (BP) and Survey Propagation (SP) messages to bypass decimation and directly produce a single satisfying assignment. Our first CSP solver, called Perturbed Blief Propagation, smoothly interpolates two well-known inference procedures; it starts as BP and ends as a Gibbs sampler, which produces a single sample from the set of solutions. Moreover we apply a similar perturbation scheme to SP to produce another CSP solver, Perturbed Survey Propagation. Experimental results on random and real-world CSPs show that Perturbed BP is often more successful and at the same time tens to hundreds of...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
We introduce a version of the cavity method for diluted mean field spin models that allows the compu...
Message passing algorithms powered by the distributive law of mathematics are efficient in finding a...
Constraint Satisfaction Problems (CSPs) are defined over a set of variables whose state must satisfy...
Message passing algorithms have proved surprisingly successful in solving hard constraint satisfacti...
Survey propagation (SP) has recently been discovered as an efficient algorithm in solv-ing classes o...
Constraint satisfaction problems (CSPs) are at the core of many tasks with di-rect practical relevan...
This paper proposes constraint propagation relaxation (CPR), a probabilistic ap-proach to classical ...
This paper proposes constraint propagation relaxation (CPR), a probabilistic approach to classical c...
We present two improvements for solving constraint satisfaction problems. First, we show that on pro...
The constraint satisfaction problem is an NP-complete problem that provides a convenient framework f...
Building adaptive constraint solvers is a major challenge in constraint programming. An important li...
Constraint satisfaction problems (CSPs) are at the core of many tasks with direct practical relevanc...
International audienceIn the context of solving large distributed constraint optimization problems (...
In this paper, we study the possibility of designing non-trivial random CSP models by exploiting the...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
We introduce a version of the cavity method for diluted mean field spin models that allows the compu...
Message passing algorithms powered by the distributive law of mathematics are efficient in finding a...
Constraint Satisfaction Problems (CSPs) are defined over a set of variables whose state must satisfy...
Message passing algorithms have proved surprisingly successful in solving hard constraint satisfacti...
Survey propagation (SP) has recently been discovered as an efficient algorithm in solv-ing classes o...
Constraint satisfaction problems (CSPs) are at the core of many tasks with di-rect practical relevan...
This paper proposes constraint propagation relaxation (CPR), a probabilistic ap-proach to classical ...
This paper proposes constraint propagation relaxation (CPR), a probabilistic approach to classical c...
We present two improvements for solving constraint satisfaction problems. First, we show that on pro...
The constraint satisfaction problem is an NP-complete problem that provides a convenient framework f...
Building adaptive constraint solvers is a major challenge in constraint programming. An important li...
Constraint satisfaction problems (CSPs) are at the core of many tasks with direct practical relevanc...
International audienceIn the context of solving large distributed constraint optimization problems (...
In this paper, we study the possibility of designing non-trivial random CSP models by exploiting the...
In the context of solving large distributed constraint optimization problems (DCOP), belief-propagat...
We introduce a version of the cavity method for diluted mean field spin models that allows the compu...
Message passing algorithms powered by the distributive law of mathematics are efficient in finding a...