In this book problems related to the choice of models in such diverse fields as regression, covariance structure, time series analysis and multinomial experiments are discussed. The emphasis is on the statistical implications for model assessment when the assessment is done with the same data that generated the model. This is a problem of long standing, notorious for its difficulty. Some contributors discuss this problem in an illuminating way. Others, and this is a truly novel feature, investigate systematically whether sample re-use methods like the bootstrap can be used to assess the quality of estimators or predictors in a reliable way given the initial model uncertainty. The book should prove to be valuable for advanced practitioners a...
Picking one ‘winner’ model for researching a certain phenomenon while discarding the rest implies a ...
UNLABELLED: Accounting for uncertainty is now a standard part of decision-analytic modeling and is r...
There is always a deviation between a model prediction and the reality that the model intends to rep...
In this article, we introduce the concept of model uncertainty. We review the frequentist and Bayesi...
In this article, we introduce the concept of model uncertainty.We review the frequentist and Bayesia...
In this article, we introduce the concept of model uncertainty. We review the frequentist and Bayesi...
In this dissertation, we use several predictive approaches to address the problem of model selection...
Model comparisons in the behavioral sciences often aim at selecting the model that best describes th...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
The bootstrap has become a popular method for exploring model (structure) uncertainty. Our experime...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
The authors discussed some directions for research and development of methods for assessing simulati...
Statistical inference is traditionally based on the assumption that one single model is the true mod...
It is common in a parametric bootstrap to select the model from the data, and then treat it as it we...
International audienceThis paper discusses an approach for treating model uncertainties in relation ...
Picking one ‘winner’ model for researching a certain phenomenon while discarding the rest implies a ...
UNLABELLED: Accounting for uncertainty is now a standard part of decision-analytic modeling and is r...
There is always a deviation between a model prediction and the reality that the model intends to rep...
In this article, we introduce the concept of model uncertainty. We review the frequentist and Bayesi...
In this article, we introduce the concept of model uncertainty.We review the frequentist and Bayesia...
In this article, we introduce the concept of model uncertainty. We review the frequentist and Bayesi...
In this dissertation, we use several predictive approaches to address the problem of model selection...
Model comparisons in the behavioral sciences often aim at selecting the model that best describes th...
The probability distribution of a model prediction is presented as a proper basis for evaluating the...
The bootstrap has become a popular method for exploring model (structure) uncertainty. Our experime...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
The authors discussed some directions for research and development of methods for assessing simulati...
Statistical inference is traditionally based on the assumption that one single model is the true mod...
It is common in a parametric bootstrap to select the model from the data, and then treat it as it we...
International audienceThis paper discusses an approach for treating model uncertainties in relation ...
Picking one ‘winner’ model for researching a certain phenomenon while discarding the rest implies a ...
UNLABELLED: Accounting for uncertainty is now a standard part of decision-analytic modeling and is r...
There is always a deviation between a model prediction and the reality that the model intends to rep...