In M-open problems where no true model can be conceptualized, it is common to back off from modeling and merely seek good prediction. Even in M-complete problems, taking a predictive approach can be very useful. Stacking is a model averaging procedure that gives a composite predictor by combining individual predictors from a list of models using weights that optimize a cross validation criterion. We show that the stacking weights also asymptotically minimize a posterior expected loss. Hence we formally provide a Bayesian justification for cross-validation. Often the weights are constrained to be positive and sum to one. For greater generality, we omit the positivity constraint and relax the ‘sum to one’ constraint
Nowadays, there is no doubt that machine learning techniques can be successfully applied to data min...
This chapter presents a model averaging approach in the M-open setting using sample re-use methods t...
We define an extension of the posterior predictive $p$-value for multiple test statistics and establ...
In M-open problems where no true model can be conceptualized, it is common to back off from modeling...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
We compare Bayes Model Averaging, BMA, to a non-Bayes form of model averaging called stacking. In st...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
Publisher Copyright: © 2022 International Society for Bayesian AnalysisStacking is a widely used mod...
We define a new Bayesian predictor called the posterior weighted median (PWM) and compare its perfor...
Funding Information: We thank the U.S. National Science Foundation, Institute of Education Sciences,...
When working with multimodal posterior distributions, MCMC algorithms can have difficulty moving bet...
The discussion suggests to couple the model selection methodology proposed in the main paper with a ...
Ensembling is among the most popular tools in machine learning (ML) due to its effectiveness in mini...
A large number of supervised classi cation models have been proposed in the literature. In order to ...
Nowadays, there is no doubt that machine learning techniques can be successfully applied to data min...
This chapter presents a model averaging approach in the M-open setting using sample re-use methods t...
We define an extension of the posterior predictive $p$-value for multiple test statistics and establ...
In M-open problems where no true model can be conceptualized, it is common to back off from modeling...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
We compare Bayes Model Averaging, BMA, to a non-Bayes form of model averaging called stacking. In st...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
Publisher Copyright: © 2022 International Society for Bayesian AnalysisStacking is a widely used mod...
We define a new Bayesian predictor called the posterior weighted median (PWM) and compare its perfor...
Funding Information: We thank the U.S. National Science Foundation, Institute of Education Sciences,...
When working with multimodal posterior distributions, MCMC algorithms can have difficulty moving bet...
The discussion suggests to couple the model selection methodology proposed in the main paper with a ...
Ensembling is among the most popular tools in machine learning (ML) due to its effectiveness in mini...
A large number of supervised classi cation models have been proposed in the literature. In order to ...
Nowadays, there is no doubt that machine learning techniques can be successfully applied to data min...
This chapter presents a model averaging approach in the M-open setting using sample re-use methods t...
We define an extension of the posterior predictive $p$-value for multiple test statistics and establ...