Title :
Structure of the high-order Boltzmann machine from independence maps
Author :
Albizuri, F.X. ; D´Anjou, Alicia ; Graña, Manuel ; Larrañaga, Pedro
Author_Institution :
Dept. of Comput. Sci., Univ. of the Basque Country, Spain
fDate :
11/1/1997 12:00:00 AM
Abstract :
In this paper we consider the determination of the structure of the high-order Boltzmann machine (HOBM), a stochastic recurrent network for approximating probability distributions. We obtain the structure of the HOBM, the hypergraph of connections, from conditional independences of the probability distribution to model. We assume that an expert provides these conditional independences and from them we build independence maps, Markov and Bayesian networks, which represent conditional independences through undirected graphs and directed acyclic graphs respectively. From these independence maps we construct the HOBM hypergraph. The central aim of this paper is to obtain a minimal hypergraph. Given that different orderings of the variables provide in general different Bayesian networks, we define their intersection hypergraph. We prove that the intersection hypergraph of all the Bayesian networks (N!) of the distribution is contained by the hypergraph of the Markov network, it is more simple, and we give a procedure to determine a subset of the Bayesian networks that verifies this property. We also prove that the Markov network graph establishes a minimum connectivity for the hypergraphs from Bayesian networks
Keywords :
Bayes methods; Boltzmann machines; Markov processes; approximation theory; graph theory; probability; recurrent neural nets; Bayesian networks; HOBM hypergraph; Markov network; conditional independences; connections hypergraph; directed acyclic graphs; high-order Boltzmann machine; independence maps; intersection hypergraph; minimal hypergraph; minimum connectivity; probability distribution; stochastic recurrent network; undirected graphs; Approximation algorithms; Bayesian methods; Computer science education; Graphical models; Helium; Markov random fields; Neural networks; Probability distribution; Random variables; Stochastic processes;
Journal_Title :
Neural Networks, IEEE Transactions on