The currently most efficient algorithm for inference with a probabilistic network builds upon a triangulation of a networks graph. In this paper, we show that pre-processing can help in finding good triangulations for probabilistic networks, that is, triangulations with a minimal maximum clique size. We provide a set of rules for stepwise reducing a graph, without losing optimality. This reduction allows us to solve the triangulation problem on a smaller graph. From the smaller graphs triangulation, a triangulation of the original graph is obtained by reversing the reduction steps. Our experimental results show that the graphs of some well-known real-life probabilistic networks can be triangulated optimally just by preproc...
We adopt probabilistic decision graphs developed in the field of automated verification as a tool fo...
International audienceIn this paper, we address the problem of finding good quality elimination orde...
Bayesian networks are graphical models whose nodes represent random variables and whose edges repres...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
The problem of achieving small total state space for triangulated belief graphs (networks) is consid...
AbstractTo perform efficient inference in Bayesian networks by means of a Junction Tree method, the ...
To perform ecient inference in Bayesian networks, the network graph needs to be triangu- lated. The ...
To perform efficient inference in Bayesian networks by means of a Junction Tree method, the network ...
In one procedure for finding the maximal prime decomposition of a Bayesian network or undirected gra...
In this paper we present results of experimental comparisons of several triangulation heuristics on ...
In this paper we propose a simple algorithm called CliqueMinTriang for computing a minimal triangula...
AbstractIn this paper we propose a simple algorithm called CliqueMinTriang for computing a minimal t...
Many algorithms for performing inference in graphical models have complexity that is exponential in ...
Udgivelsesdato: JANWe adopt probabilistic decision graphs developed in the field of automated verifi...
We adopt probabilistic decision graphs developed in the field of automated verification as a tool fo...
International audienceIn this paper, we address the problem of finding good quality elimination orde...
Bayesian networks are graphical models whose nodes represent random variables and whose edges repres...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
The problem of achieving small total state space for triangulated belief graphs (networks) is consid...
AbstractTo perform efficient inference in Bayesian networks by means of a Junction Tree method, the ...
To perform ecient inference in Bayesian networks, the network graph needs to be triangu- lated. The ...
To perform efficient inference in Bayesian networks by means of a Junction Tree method, the network ...
In one procedure for finding the maximal prime decomposition of a Bayesian network or undirected gra...
In this paper we present results of experimental comparisons of several triangulation heuristics on ...
In this paper we propose a simple algorithm called CliqueMinTriang for computing a minimal triangula...
AbstractIn this paper we propose a simple algorithm called CliqueMinTriang for computing a minimal t...
Many algorithms for performing inference in graphical models have complexity that is exponential in ...
Udgivelsesdato: JANWe adopt probabilistic decision graphs developed in the field of automated verifi...
We adopt probabilistic decision graphs developed in the field of automated verification as a tool fo...
International audienceIn this paper, we address the problem of finding good quality elimination orde...
Bayesian networks are graphical models whose nodes represent random variables and whose edges repres...