We consider model selection uncertainty in linear regression. We study theoretically and by simulation the approach of Buckland and co-workers, who proposed estimating a parameter common to all models under study by taking a weighted average over the models, using weights obtained from information criteria or the bootstrap. This approach is compared with the usual approach in which the 'best' model is used, and with Bayesian model averaging. The weighted predictor behaves similarly to model averaging, with generally more realistic mean-squared errors than the usual model-selection-based estimator
Classical statistical analysis is split into two steps: model selection and post-selection inference...
Model selection methods provide a way to select one model among a set of models in a statistically v...
Bayesian model averaging (BMA) ranks the plausibility of alternative conceptual models according to ...
Model selection uncertainty would occur if we selected a model based on one data set and subsequentl...
Uma abordagem típica de análise estatística consiste em vários estágios: exploração descritiva do co...
An important statistical application is the problem of determining an appropriate set of input varia...
Statistical inference is traditionally based on the assumption that one single model is the true mod...
Model comparisons in the behavioral sciences often aim at selecting the model that best describes th...
Picking one ‘winner’ model for researching a certain phenomenon while discarding the rest implies a ...
In this dissertation, we use several predictive approaches to address the problem of model selection...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
no issnIn model averaging a weighted estimator is constructed based on a set of models, extending mo...
In this article, we introduce the concept of model uncertainty.We review the frequentist and Bayesia...
Classical statistical analysis is split into two steps: model selection and post-selection inference...
Model selection methods provide a way to select one model among a set of models in a statistically v...
Bayesian model averaging (BMA) ranks the plausibility of alternative conceptual models according to ...
Model selection uncertainty would occur if we selected a model based on one data set and subsequentl...
Uma abordagem típica de análise estatística consiste em vários estágios: exploração descritiva do co...
An important statistical application is the problem of determining an appropriate set of input varia...
Statistical inference is traditionally based on the assumption that one single model is the true mod...
Model comparisons in the behavioral sciences often aim at selecting the model that best describes th...
Picking one ‘winner’ model for researching a certain phenomenon while discarding the rest implies a ...
In this dissertation, we use several predictive approaches to address the problem of model selection...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
no issnIn model averaging a weighted estimator is constructed based on a set of models, extending mo...
In this article, we introduce the concept of model uncertainty.We review the frequentist and Bayesia...
Classical statistical analysis is split into two steps: model selection and post-selection inference...
Model selection methods provide a way to select one model among a set of models in a statistically v...
Bayesian model averaging (BMA) ranks the plausibility of alternative conceptual models according to ...