학술논문

Variable Selection for Hidden Markov Models with Continuous Variables and Missing Data
Document Type
Original Paper
Source
Journal of Classification. :1-22
Subject
Expectation-maximization algorithm
Greedy search algorithm
Missing-at-random assumption
Model-based variables selection
Sustainable development
Language
English
ISSN
0176-4268
1432-1343
Abstract
We propose a variable selection method for multivariate hidden Markov models with continuous responses that are partially or completely missing at a given time occasion. Through this procedure, we achieve a dimensionality reduction by selecting the subset of the most informative responses for clustering individuals and simultaneously choosing the optimal number of these clusters corresponding to latent states. The approach is based on comparing different model specifications in terms of the subset of responses assumed to be dependent on the latent states, and it relies on a greedy search algorithm based on the Bayesian information criterion seen as an approximation of the Bayes factor. A suitable expectation-maximization algorithm is employed to obtain maximum likelihood estimates of the model parameters under the missing-at-random assumption. The proposal is illustrated via Monte Carlo simulation and an application where development indicators collected over eighteen years are selected, and countries are clustered into groups to evaluate their growth over time.