We propose a procedure associated with the idea of the E-M algorithm for model selection in the presence of missing data. The idea extends the concept of parameters to include both the model and the parameters under the model, and thus allows the model to be part of the E-M iterations. We develop the procedure, known as the E-MS algorithm, under the assumption that the class of candidate models is finite. Some special cases of the procedure are considered, including E-MS with the generalized information criteria (GIC), and E-MS with the adaptive fence (AF; Jiang et al. 2008). We prove numerical convergence of the E-MS algorithm as well as consistency in model selection of the limiting model of the E-MS convergence, for E-MS with GIC and E-M...
A popular approach to estimation based on incomplete data is the EM algorithm. For categorical data,...
Application of classical model selection methods such as Akaike’s information cri-terion AIC becomes...
The classical approach to statistical analysis is usually based upon finding values for model parame...
We propose an extension of the EM algorithm and its stochastic versions for the construction of inco...
We consider novel methods for the computation of model selection criteria in missing-data problems b...
Model selection criteria in the presence of missing data based on the Kullback-Leibler discrepanc
This article describes a new approach to Bayesian selection of decomposabl e models with incomplete ...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Model selection is a critical part of analysis of data in applied research. Equally ubiquitous is th...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
This paper discusses a novel algorithm for solving a missing data problem in the machine learning pr...
This article presents an algorithm for accommodating missing data in situations where a natural set ...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
A popular approach to estimation based on incomplete data is the EM algorithm. For categorical data,...
Application of classical model selection methods such as Akaike’s information cri-terion AIC becomes...
The classical approach to statistical analysis is usually based upon finding values for model parame...
We propose an extension of the EM algorithm and its stochastic versions for the construction of inco...
We consider novel methods for the computation of model selection criteria in missing-data problems b...
Model selection criteria in the presence of missing data based on the Kullback-Leibler discrepanc
This article describes a new approach to Bayesian selection of decomposabl e models with incomplete ...
When data are incomplete, models are often catalogued according to one of the three modelling framew...
Model selection is a critical part of analysis of data in applied research. Equally ubiquitous is th...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
This paper discusses a novel algorithm for solving a missing data problem in the machine learning pr...
This article presents an algorithm for accommodating missing data in situations where a natural set ...
This paper provides further insight into the key concept of missing at random (MAR) in incomplete da...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
A popular approach to estimation based on incomplete data is the EM algorithm. For categorical data,...
Application of classical model selection methods such as Akaike’s information cri-terion AIC becomes...
The classical approach to statistical analysis is usually based upon finding values for model parame...