Hidden Markov Models With Set-Valued Parameters


Autoria(s): Mauá, Denis Deratani; Antonucci, Alessandro; de Campos, Cassio Polpo
Data(s)

05/03/2016

31/12/1969

Resumo

Hidden Markov models (HMMs) are widely used probabilistic models of sequential data. As with other probabilistic models, they require the specification of local conditional probability distributions, whose assessment can be too difficult and error-prone, especially when data are scarce or costly to acquire. The imprecise HMM (iHMM) generalizes HMMs by allowing the quantification to be done by sets of, instead of single, probability distributions. iHMMs have the ability to suspend judgment when there is not enough statistical evidence, and can serve as a sensitivity analysis tool for standard non-stationary HMMs. In this paper, we consider iHMMs under the strong independence interpretation, for which we develop efficient inference algorithms to address standard HMM usage such as the computation of likelihoods and most probable explanations, as well as performing filtering and predictive inference. Experiments with real data show that iHMMs produce more reliable inferences without compromising the computational efficiency.

Identificador

http://pure.qub.ac.uk/portal/en/publications/hidden-markov-models-with-setvalued-parameters(5fd2aad1-7e3b-479f-a3da-f0249a01eba7).html

http://dx.doi.org/doi:10.1016/j.neucom.2015.08.095

Idioma(s)

eng

Direitos

info:eu-repo/semantics/embargoedAccess

Fonte

Mauá , D D , Antonucci , A & de Campos , C P 2016 , ' Hidden Markov Models With Set-Valued Parameters ' Neurocomputing , vol 180 , pp. 94-107 . DOI: doi:10.1016/j.neucom.2015.08.095

Tipo

article