Bayesian model averaging (BMA) is the state of the art approach for overcoming model uncertainty. Yet, especially on small data sets, the results yielded by BMA might be sensitive to the prior over the models. Credal Model Averaging (CMA) addresses this problem by substituting the single prior over the models by a set of priors (credal set). Such approach solves the problem of how to choose the prior over the models and automates sensitivity analysis. We discuss various CMA algorithms for building an ensemble of logistic regressors characterized by different sets of covariates. We show how CMA can be appropriately tuned to the case in which one is prior-ignorant and to the case in which instead domain knowledge is available. CMA detects pri...
This article describes the BMS (Bayesian model sampling) package for R that implements Bayesian mode...
Model uncertainty is a pervasive problem in regression applications. Bayesian model averaging (BMA) ...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
Datasets of population dynamics are typically characterized by a short temporal extension. In this c...
When developing a species distribution model, usually one tests several competing models such as log...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
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...
Nowadays model uncertainty has become one of the most important problems in both academia and indust...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
AbstractPredictions made by imprecise-probability models are often indeterminate (that is, set-value...
Many statistical scenarios initially involve several candidate models that describe the data-generat...
Naive Bayes (NB) is well-known to be a simple but effective classifier, especially when combined wit...
Bayesian model averaging attempts to combine parameter estimation and model uncertainty in one coher...
The standard practice of selecting a single model from some class of models and then making inferenc...
This article describes the BMS (Bayesian model sampling) package for R that implements Bayesian mode...
Model uncertainty is a pervasive problem in regression applications. Bayesian model averaging (BMA) ...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
Datasets of population dynamics are typically characterized by a short temporal extension. In this c...
When developing a species distribution model, usually one tests several competing models such as log...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
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...
Nowadays model uncertainty has become one of the most important problems in both academia and indust...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
AbstractPredictions made by imprecise-probability models are often indeterminate (that is, set-value...
Many statistical scenarios initially involve several candidate models that describe the data-generat...
Naive Bayes (NB) is well-known to be a simple but effective classifier, especially when combined wit...
Bayesian model averaging attempts to combine parameter estimation and model uncertainty in one coher...
The standard practice of selecting a single model from some class of models and then making inferenc...
This article describes the BMS (Bayesian model sampling) package for R that implements Bayesian mode...
Model uncertainty is a pervasive problem in regression applications. Bayesian model averaging (BMA) ...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...