On the Derivational Entropy of Left-to-Right Probabilistic Finite-State Automata and Hidden Markov Models

[EN] Probabilistic finite-state automata are a formalism that is widely used in many problems of automatic speech recognition and natural language processing. Probabilistic finite-state automata are closely related to other finite-state models as weighted finite-state automata, word lattices, and hi...

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Detalhes bibliográficos
Autores: Sánchez Peiró, Joan Andreu|||0000-0003-0423-2020, Rocha, M. A., Romero, Verónica, Villegas, Mauricio
Tipo de documento: artigo
Data de publicação:2018
País:España
Recursos:Universitat Politècnica de València (UPV)
Repositório:RiuNet. Repositorio Institucional de la Universitat Politécnica de Valéncia
Idioma:inglês
OAI Identifier:oai:riunet.upv.es:10251/133558
Acesso em linha:https://riunet.upv.es/handle/10251/133558
Access Level:Acceso aberto
Palavra-chave:LENGUAJES Y SISTEMAS INFORMATICOS
ESTADISTICA E INVESTIGACION OPERATIVA
Descrição
Resumo:[EN] Probabilistic finite-state automata are a formalism that is widely used in many problems of automatic speech recognition and natural language processing. Probabilistic finite-state automata are closely related to other finite-state models as weighted finite-state automata, word lattices, and hidden Markov models. Therefore, they share many similar properties and problems. Entropy measures of finite-state models have been investigated in the past in order to study the information capacity of these models. The derivational entropy quantifies the uncertainty that the model has about the probability distribution it represents. The derivational entropy in a finite-state automaton is computed from the probability that is accumulated in all of its individual state sequences. The computation of the entropy from a weighted finite-state automaton requires a normalized model. This article studies an efficient computation of the derivational entropy of left-to-right probabilistic finite-state automata, and it introduces an efficient algorithm for normalizing weighted finite-state automata. The efficient computation of the derivational entropy is also extended to continuous hidden Markov models.