Title :
Convergence results for relational Bayesian networks
Author_Institution :
Max-Planck-Inst. fur Inf., Saarbrucken, Germany
Abstract :
Relational Bayesian networks are an extension of the method of probabilistic model construction by Bayesian networks. They define probability distributions on finite relational structures by conditioning the probability of a ground atom r(a1, ..., a n) on first-order properties of a1, ..., an that have been established by previous random decisions. In this paper we investigate from a finite model theory perspective the convergence properties of the distributions defined in this manner. A subclass of relational Bayesian networks is identified that define distributions with convergence laws for first-order properties
Keywords :
Bayes methods; convergence; inference mechanisms; relational algebra; Bayesian networks; convergence laws; finite relational structures; probability distributions; relational Bayesian networks; Bayesian methods; Computational intelligence; Computer networks; Convergence; Distributed computing; Fault diagnosis; Intelligent networks; Monitoring; Probability distribution; Random variables;
Conference_Titel :
Logic in Computer Science, 1998. Proceedings. Thirteenth Annual IEEE Symposium on
Conference_Location :
Indianapolis, IN
Print_ISBN :
0-8186-8506-9
DOI :
10.1109/LICS.1998.705642