We define a new Bayesian predictor called the posterior weighted median (PWM) and compare its performance to several other predictors including the Bayes model average under squared error loss, the Barbieri-Berger median model predictor, the stacking predictor, and the model average predictor based on Akaike's information criterion. We argue that PWM generally gives better performance than other predictors over a range of M-complete problems. This range is between the M-closed-M-complete boundary and the M-complete-M-open boundary. Indeed, as a problem gets closer to M-open, it seems that M-complete predictive methods begin to break down. Our comparisons rest on extensive simulations and real data examples. As a separate issue, we introduce...
Model choice is a fundamental and much discussed activity in the analysis of datasets. Nonnested hie...
Let X | µ ∼ Np(µ, vxI) and Y | µ ∼ Np(µ, vyI) be independent p-dimensional multivariate normal vecto...
The out-of-sample forecast performance of two alternative methods for dealing with dimensionality is...
We define a new Bayesian predictor called the posterior weighted median (PWM) and compare its perfor...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
Model choice is a fundamental and much discussed activity in the analysis of data sets. Hierarchical...
In M-open problems where no true model can be conceptualized, it is common to back off from modeling...
Missing data are a common problem for both the construction and implementation of a prediction algor...
Often the goal of model selection is to choose a model for future prediction, and it is natural to m...
This chapter presents a model averaging approach in the M-open setting using sample re-use methods t...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
Often the goal of model selection is to choose a model for future prediction, and it is natural to m...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
We investigate on-line prediction of individual sequences. Given a class of predictors, the goal is ...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
Model choice is a fundamental and much discussed activity in the analysis of datasets. Nonnested hie...
Let X | µ ∼ Np(µ, vxI) and Y | µ ∼ Np(µ, vyI) be independent p-dimensional multivariate normal vecto...
The out-of-sample forecast performance of two alternative methods for dealing with dimensionality is...
We define a new Bayesian predictor called the posterior weighted median (PWM) and compare its perfor...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
Model choice is a fundamental and much discussed activity in the analysis of data sets. Hierarchical...
In M-open problems where no true model can be conceptualized, it is common to back off from modeling...
Missing data are a common problem for both the construction and implementation of a prediction algor...
Often the goal of model selection is to choose a model for future prediction, and it is natural to m...
This chapter presents a model averaging approach in the M-open setting using sample re-use methods t...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
Often the goal of model selection is to choose a model for future prediction, and it is natural to m...
Bayesian model averaging is flawed in the M-open setting in which the true data-generating process i...
We investigate on-line prediction of individual sequences. Given a class of predictors, the goal is ...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
Model choice is a fundamental and much discussed activity in the analysis of datasets. Nonnested hie...
Let X | µ ∼ Np(µ, vxI) and Y | µ ∼ Np(µ, vyI) be independent p-dimensional multivariate normal vecto...
The out-of-sample forecast performance of two alternative methods for dealing with dimensionality is...