This book provides a concise and accessible overview of model averaging, with a focus on applications. Model averaging is a common means of allowing for model uncertainty when analysing data, and has been used in a wide range of application areas, such as ecology, econometrics, meteorology and pharmacology. The book presents an overview of the methods developed in this area, illustrating many of them with examples from the life sciences involving real-world data. It also includes an extensive list of references and suggestions for further research. Further, it clearly demonstrates the links between the methods developed in statistics, econometrics and machine learning, as well as the connection between the Bayesian and frequentist approache...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SEDYVIN [ADD1_IRSTEA]Biodiversité et fonctionnalités éco...
I use two examples to illustrate three methods for model averaging: using AIC weights, using BIC wei...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
The method of model averaging has become an important tool to deal with model uncertainty, for examp...
The standard practice of selecting a single model from some class of models and then making inferenc...
In ecology, the true causal structure for a given problem is often not known, and several plausible ...
Abstract. Standard statistical practice ignores model uncertainty. Data analysts typically select a ...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
Abstract In applications, the traditional estimation procedure generally begins with model selection...
Model averaging is an alternative approach to classical model selection in model estimation. The mod...
This paper presents recent developments in model selection and model averaging for parametric and no...
Many statistical scenarios initially involve several candidate models that describe the data-generat...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SEDYVIN [ADD1_IRSTEA]Biodiversité et fonctionnalités éco...
I use two examples to illustrate three methods for model averaging: using AIC weights, using BIC wei...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
The method of model averaging has become an important tool to deal with model uncertainty, for examp...
The standard practice of selecting a single model from some class of models and then making inferenc...
In ecology, the true causal structure for a given problem is often not known, and several plausible ...
Abstract. Standard statistical practice ignores model uncertainty. Data analysts typically select a ...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
Abstract In applications, the traditional estimation procedure generally begins with model selection...
Model averaging is an alternative approach to classical model selection in model estimation. The mod...
This paper presents recent developments in model selection and model averaging for parametric and no...
Many statistical scenarios initially involve several candidate models that describe the data-generat...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SEDYVIN [ADD1_IRSTEA]Biodiversité et fonctionnalités éco...
I use two examples to illustrate three methods for model averaging: using AIC weights, using BIC wei...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...