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Method of probabilistic inference from learning data in Bayesian networks
Authors:A. N. Terent’yev  P. I. Bidyuk
Affiliation:(1) Institute of Applied Systems Analysis of the National Technical University of Ukraine “Kyiv Polytechnical Institute,”, Kyiv, Ukraine
Abstract:Bayesian networks (BN) are a powerful tool for various data-mining systems. The available methods of probabilistic inference from learning data have shortcomings such as high computation complexity and cumulative error. This is due to a partial loss of information in transition from empiric information to conditional probability tables. The paper presents a new simple and exact algorithm for probabilistic inference in BN from learning data. __________ Translated from Kibernetika i Sistemnyi Analiz, No. 3, pp. 93–99, May–June 2007.
Keywords:Bayesian network  conditional probability tables  probabilistic inference  computational characteristics
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