Title of article
Model Selection for Mixture Models Using Perfect Sample
Author/Authors
Fallahigilan, Sadegh Razi University , Sayyareh, Abdolreza K. N. Toosi University of Technology
Pages
40
From page
173
To page
212
Abstract
We have considered a perfect sample method for model selection of finite mixture models with either known (fixed) or unknown number of components which can be applied in the most general setting with assumptions on the relation between the rival models and the true distribution. It is, both, one or neither to be well-specified or mis-specified, they may be nested or non-nested. We consider mixture distribution as a complete-data (bivariate) distribution by prediction of missing data variable (unobserved variable) and show that this ideas is applicable to use Vuong's test for select optimum mixture model when number of components are known (fixed) or unknown. We have considered AIC and BIC based on the complete-data distribution. The performance of this method is evaluated by Monte-Carlo method and real data set, as Total Energy Production.
Keywords
finite mixture model , perfect sample , model selection , missing data variable , Vuong's test
Serial Year
2019
Record number
2496713
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