Equivalence and Reduction of Hidden Markov Models

Item

Title
en_US Equivalence and Reduction of Hidden Markov Models
Creator
en_US Balasubramanian, Vijay
Date
2004-10-20T19:55:31Z
Date Available
2004-10-20T19:55:31Z
Date Issued
en_US 1993-01-01
Identifier
en_US AITR-1370
Abstract
en_US This report studies when and why two Hidden Markov Models (HMMs) may represent the same stochastic process. HMMs are characterized in terms of equivalence classes whose elements represent identical stochastic processes. This characterization yields polynomial time algorithms to detect equivalent HMMs. We also find fast algorithms to reduce HMMs to essentially unique and minimal canonical representations. The reduction to a canonical form leads to the definition of 'Generalized Markov Models' which are essentially HMMs without the positivity constraint on their parameters. We discuss how this generalization can yield more parsimonious representations of stochastic processes at the cost of the probabilistic interpretation of the model parameters.
Extent
en_US 111 p.
339883 bytes
1337526 bytes
Format
application/octet-stream
application/pdf
Language
en_US
Relation
en_US AITR-1370
Subject
en_US Hideen Markov Models
en_US minimazation
en_US statistical modelling
en_US sstochastic processes