Abstract: Two bootstrap-corrected variants of the Akaike information criterion are proposed for the purpose of small-sample mixed model selection. These two variants are asymptotically equivalent, and provide asymptotically unbiased estimators of the expected Kullback-Leibler discrepancy between the true model and a fitted candidate model. The performance of the criteria is investigated in a simulation study where the random effects and the errors for the true model are generated from a Gaussian distribution. The parametric bootstrap is employed. The simulation results suggest that both criteria provide effective tools for choosing a mixed model with an appropriate mean and covariance structure. A theoretical asymptotic justification for th...
In the mixed modeling framework, Monte Carlo simulation and cross validation are em-ployed to develo...
In semiparametric regression models, we have developed a small-sample criterion, AICC, for the selec...
In linear mixed models, the conditional Akaike Information Criterion (cAIC) is a procedure for varia...
We propose two model selection criteria relying on the bootstrap approach, denoted by QAICb1 and QAI...
The Akaike information criterion, AIC, and its corrected version, AICc are two methods for selecting...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
developed for the purpose of small-sample state-space model selection. Our variant of AIC utilizes b...
Estimation of Kullback-Leibler amount of information is a crucial part of deriving a statistical mod...
Akaike’s Information Criteria provide a basis for choosing between competing approaches to testing f...
The selection of an appropriate model is a fundamental step of the data analysis in small area estim...
Model selection has received much attention and significantly developed in the recent decades. When ...
[[abstract]]We consider penalized likelihood criteria for selecting models of dependent processes. T...
Akaike Information Criterion (AIC) has been used widely as a statistical criterion to compare the ap...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
SUMMARY. We consider the problem of selecting the fixed and random effects in a mixed linear model. ...
In the mixed modeling framework, Monte Carlo simulation and cross validation are em-ployed to develo...
In semiparametric regression models, we have developed a small-sample criterion, AICC, for the selec...
In linear mixed models, the conditional Akaike Information Criterion (cAIC) is a procedure for varia...
We propose two model selection criteria relying on the bootstrap approach, denoted by QAICb1 and QAI...
The Akaike information criterion, AIC, and its corrected version, AICc are two methods for selecting...
Estimation of the expected Kullback-Leibler information is the basis for deriving the Akaike informa...
developed for the purpose of small-sample state-space model selection. Our variant of AIC utilizes b...
Estimation of Kullback-Leibler amount of information is a crucial part of deriving a statistical mod...
Akaike’s Information Criteria provide a basis for choosing between competing approaches to testing f...
The selection of an appropriate model is a fundamental step of the data analysis in small area estim...
Model selection has received much attention and significantly developed in the recent decades. When ...
[[abstract]]We consider penalized likelihood criteria for selecting models of dependent processes. T...
Akaike Information Criterion (AIC) has been used widely as a statistical criterion to compare the ap...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
SUMMARY. We consider the problem of selecting the fixed and random effects in a mixed linear model. ...
In the mixed modeling framework, Monte Carlo simulation and cross validation are em-ployed to develo...
In semiparametric regression models, we have developed a small-sample criterion, AICC, for the selec...
In linear mixed models, the conditional Akaike Information Criterion (cAIC) is a procedure for varia...