We investigate the problem of reducing the complexity of a graphical model (G;PG) by finding a subgraph H of G, chosen from a class of subgraphs H, such that H is optimal with respect to KL-divergence. We do this by first defining a decomposition tree representation for G, which is closely related to the junction-tree representation for G. We then give an algorithm which uses this representation to compute the optimal H 2 H. Gavril [2] and Tarjan [3] have used graph separation properties to solve several combinatorial optimization problems when the size of the minimal separators in the graph is bounded. We present an extension of this technique which applies to some important choices of H even when the size of the minimal separators of G ar...
A number of basic results concerning tree optimization problems are presented. As well as treating t...
I consider the problem of learning an optimal path graphical model from data and show the problem to...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
In this paper, we consider the problem of computing an optimal branch decomposition of a graph. Bran...
Many real-life problems can be modeled as optimization or decision problems on graphs. Also, many of...
International audienceFor the study and the solving of NP-hard problems, the concept of tree decompo...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/19...
Graphical models are a well-known convenient tool to describe complex interactions between variables...
We present a method for finding the optimal decision on Random Variables in a graphical model. Upper...
AbstractDecompositions of a graph by clique separators are investigated which have the additional pr...
The notions of branchwidth and branch-decomposition of graphs are introduced by Robertson and Seymou...
A useful approach to the mathematical analysis of large-scale biological networks is based upon thei...
We investigate tree decompositions (T,(Xt)tϵV(T)) whose width is “close to optimal” and such that al...
Abstract. Decomposition of large engineering system models is desirable since increased model size r...
AbstractWe show how to use the split decomposition to solve some NP-hard optimization problems on gr...
A number of basic results concerning tree optimization problems are presented. As well as treating t...
I consider the problem of learning an optimal path graphical model from data and show the problem to...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
In this paper, we consider the problem of computing an optimal branch decomposition of a graph. Bran...
Many real-life problems can be modeled as optimization or decision problems on graphs. Also, many of...
International audienceFor the study and the solving of NP-hard problems, the concept of tree decompo...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/19...
Graphical models are a well-known convenient tool to describe complex interactions between variables...
We present a method for finding the optimal decision on Random Variables in a graphical model. Upper...
AbstractDecompositions of a graph by clique separators are investigated which have the additional pr...
The notions of branchwidth and branch-decomposition of graphs are introduced by Robertson and Seymou...
A useful approach to the mathematical analysis of large-scale biological networks is based upon thei...
We investigate tree decompositions (T,(Xt)tϵV(T)) whose width is “close to optimal” and such that al...
Abstract. Decomposition of large engineering system models is desirable since increased model size r...
AbstractWe show how to use the split decomposition to solve some NP-hard optimization problems on gr...
A number of basic results concerning tree optimization problems are presented. As well as treating t...
I consider the problem of learning an optimal path graphical model from data and show the problem to...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...