Consistency of information criteria for model selection with missing data
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Abstract
In this paper, we investigate the consistency of the Expectation Maximization
(EM) algorithm-based information criteria for model selection
with missing data. The criteria correspond to a penalization of the
conditional expectation of the complete data log-likelihood given the
observed data and with respect to the missing data conditional density.
We present asymptotic properties related to maximum likelihood
estimation in the presence of incomplete data and we provide sufficient
conditions for the consistency of model selection by minimizing
the information criteria. Their finite sample performance is illustrated
through simulation and real data studies.
