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JETAI
1998

Independency relationships and learning algorithms for singly connected networks

13 years 4 months ago
Independency relationships and learning algorithms for singly connected networks
Graphical structures such as Bayesian networks or Markov networks are very useful tools for representing irrelevance or independency relationships, and they may be used to e ciently perform reasoning tasks. Singly connected networks are important speci® c cases where there is no more than one undirected path connecting each pair of variables. The aim of this paper is to investigate the kind of properties that a dependency model must verify in order to be equivalent to a singly connected graph structure, as a way of driving automated discovery and construction of singly connected networks in data. The main results are the characterizations of those dependency models which are isomorphic to singly connected graphs (either via the d-separation criterion for directed acyclic graphs or via the separation criterion for undirected graphs), as well as the development of e cient algorithms for learning singly connected graph representations of dependency models. Keywords : graphical models, in...
Luis M. de Campos
Added 22 Dec 2010
Updated 22 Dec 2010
Type Journal
Year 1998
Where JETAI
Authors Luis M. de Campos
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