AbstractTo perform efficient inference in Bayesian networks by means of a Junction Tree method, the network graph needs to be triangulated. The quality of this triangulation largely determines the efficiency of the subsequent inference, but the triangulation problem is unfortunately NP-hard. It is common for existing methods to use the treewidth criterion for optimality of a triangulation. However, this criterion may lead to a somewhat harder inference problem than the total table size criterion. We therefore investigate new methods for depth-first search and best-first search for finding optimal total table size triangulations. The search methods are made faster by efficient dynamic maintenance of the cliques of a graph. This problem was i...
International audienceMinimal triangulations and potential maximal cliques are the main ingredients ...
We consider practical methods for the problem of finding a minimum-weight triangulation (MWT) of a p...
Many algorithms for performing inference in graphical models have complexity that is exponential in ...
AbstractTo perform efficient inference in Bayesian networks by means of a Junction Tree method, the ...
To perform efficient inference in Bayesian networks by means of a Junction Tree method, the network ...
To perform ecient inference in Bayesian networks, the network graph needs to be triangu- lated. The ...
The junction tree algorithm is currently the most popular algorithm for exact inference on Bayesian ...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
When triangulating a belief network we aim to obtain a junction tree of minimum state space. Searc...
We consider problems that can be formulated as a task of finding an optimal triangulation of a graph...
AbstractWe offer an algorithm that finds a clique tree such that the size of the largest clique is a...
AbstractThis article describes an algorithm that solves the problem of finding the K most probable c...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tr...
The problem of achieving small total state space for triangulated belief graphs (networks) is consid...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
International audienceMinimal triangulations and potential maximal cliques are the main ingredients ...
We consider practical methods for the problem of finding a minimum-weight triangulation (MWT) of a p...
Many algorithms for performing inference in graphical models have complexity that is exponential in ...
AbstractTo perform efficient inference in Bayesian networks by means of a Junction Tree method, the ...
To perform efficient inference in Bayesian networks by means of a Junction Tree method, the network ...
To perform ecient inference in Bayesian networks, the network graph needs to be triangu- lated. The ...
The junction tree algorithm is currently the most popular algorithm for exact inference on Bayesian ...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
When triangulating a belief network we aim to obtain a junction tree of minimum state space. Searc...
We consider problems that can be formulated as a task of finding an optimal triangulation of a graph...
AbstractWe offer an algorithm that finds a clique tree such that the size of the largest clique is a...
AbstractThis article describes an algorithm that solves the problem of finding the K most probable c...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tr...
The problem of achieving small total state space for triangulated belief graphs (networks) is consid...
The currently most efficient algorithm for inference with a probabilistic network builds upon a tria...
International audienceMinimal triangulations and potential maximal cliques are the main ingredients ...
We consider practical methods for the problem of finding a minimum-weight triangulation (MWT) of a p...
Many algorithms for performing inference in graphical models have complexity that is exponential in ...