Title :
Approximating probabilistic inference in Bayesian belief networks
Author :
Dagum, Paul ; Chavez, R. Martin
Author_Institution :
Sect. of Med. Inf., Stanford Univ. Sch. of Med., CA, USA
fDate :
3/1/1993 12:00:00 AM
Abstract :
A belief network comprises a graphical representation of dependencies between variables of a domain and a set of conditional probabilities associated with each dependency. Unless ρ=NP, an efficient, exact algorithm does not exist to compute probabilistic inference in belief networks. Stochastic simulation methods, which often improve run times, provide an alternative to exact inference algorithms. Such a stochastic simulation algorithm, D-BNRAS, which is a randomized approximation scheme is presented. To analyze the run time, belief networks are parameterized, by the dependence value D ξ, which is a measure of the cumulative strengths of the belief network dependencies given background evidence ξ. This parameterization defines the class of f-dependence networks. The run time of D-BNRAS is polynomial when f is a polynomial function. Thus, the results prove the existence of a class of belief networks for which inference approximation is polynomial and, hence, provably faster than any exact algorithm
Keywords :
Bayes methods; belief maintenance; inference mechanisms; polynomials; probabilistic logic; uncertainty handling; Bayesian belief networks; D-BNRAS; conditional probabilities; polynomial; probabilistic inference approximation; reasoning; stochastic simulation algorithm; Approximation algorithms; Bayesian methods; Computational modeling; Inference algorithms; Intelligent networks; Knowledge representation; Medical simulation; Polynomials; Sampling methods; Stochastic processes;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on