Search results for "hidden states"

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Model selection procedure for mixture hidden Markov models

2021

This paper proposes a model selection procedure to identify the number of clusters and hidden states in discrete Mixture Hidden Markov models (MHMMs). The model selection is based on a step-wise approach that uses, as score, information criteria and an entropy criterion. By means of a simulation study, we show that our procedure performs better than classical model selection methods in identifying the correct number of clusters and hidden states or an approximation of them

model selectionclustersinformation criteriaSettore SECS-S/01 - Statisticahidden statesentropy-based scores
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