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JOURNALS // Informatics and Automation // Archive

Tr. SPIIRAN, 2010 Issue 12, Pages 134–150 (Mi trspy371)

This article is cited in 6 papers

Representation of binary linear hidden Markov models in the form of algebraic Bayesian networks

M.~P.~Momzikovaa, O. I. Velikodnayab, M. I. Pinskyb, A. V. Sirotkinc, A. L. Tulupyevcd, A. A. Fil'chenkovcd

a Saint-Petersburg State University
b St. Petersburg State University of Information Technologies, Mechanics and Optics
c St. Petersburg Institute for Informatics and Automation of RAS
d St. Petersburg State University, Department of Mathematics and Mechanics

Abstract: Probabilistic graphical models including hidden Markov models and Bayesian networks are widespread in process modeling in such fields as speech recognition, information theory, machine translation and molecular biology. The goal of this work is toresearch of mutual relations between hidden Markov models and algebraic Bayesian networks. An algorithm to design a binary linear hidden Markov models as an algebraic Bayesian networks is suggested. The theorem about coincidence between probabilistic semantics is proven.

Keywords: hidden Markov models, algebraic Bayesian networks, binary linear hidden Markov models, probabilistic graphical models.

UDC: 004.8

Received: 06.12.2010
Accepted: 06.12.2010



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