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JOURNALS // Informatics and Automation // Archive

Tr. SPIIRAN, 2009 Issue 8, Pages 191–232 (Mi trspy10)

This article is cited in 9 papers

Algebraic Bayesian networks: an implementation of probabilistic-logic inference in a system of Java-programs

A. L. Tulupyevab

a St. Petersburg Institute for Informatics and Automation of RAS
b St. Petersburg State University, Department of Mathematics and Mechanics

Abstract: Algebraic Bayesian Networks (ABN) is a probabilistic-logic model for knowledge patterns bases with uncertainty. A knowledge pattern mathematical model is a conjuncts ideal with their estimates of probability. The estimates can be scalar as well as interval. An ABN consists of a set of knowledge patterns; this set is referred to as the primary structure of the ABN. The set of links among knowledge patterns is referred to as the secondary structure of the ABN; this structure is represented with a join graph (or with its subtypes — join tree or join chain). The paper offers data structures that can represent knowledge patterns as well as the primary and secondary structures of ABNs in RDBMSs or java code as well as an implementation of probabilistic-logic inference in ABNs.

Keywords: uncertainty representation, algebraic Bayesian networks, probabilistic graphical models, knowledge pattern, knowledge with uncertainty, probabilistic-logic inference.

UDC: 004.8

Received: 25.06.2009



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