When faced with output from multiple simulation models, a decision maker must aggregate the forecasts provided by each model. This problem is made harder when the models are based on similar assumptions or use overlapping input data. This situation is similar to the problem of expert judgment aggregation where experts provide a forecast distribution based on overlapping information, but only samples from the output distribution are obtained in the simulation case. We propose a Bayesian method for aggregating forecasts from multiple simulation models. We demonstrate the approach using a climate change exam-ple, an area often informed by multiple simulation models.
This study introduces a new forecast aggregation technique. Adding to the well- known difficulties a...
Existing approaches to combining multiple forecasts generally offer either theoretical richness or e...
Projections of future climate change caused by increasing greenhouse gases depend critically on nume...
A Bayesian methodology is used to assess the information content of categorical, probabilistic forec...
A Bayesian methodology is used to assess the information content of categorical, probabilistic forec...
We consider in this paper the problem of aggregating the output from multiple computer simulators (m...
In order to improve forecasts, a decision-maker often combines probabilities given by various source...
For the study of climate change, many General Circulation Models (GCM)s have been designed, modeling...
Mathematical models are powerful tools for epidemiology and can be used to compare control actions. ...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
<div><p>Mathematical models are powerful tools for epidemiology and can be used to compare control a...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...
Recent coordinated efforts, in which numerous general circulation climate models have been run for a...
Projections of future climate change cannot rely on a single model. It has become common to rely on ...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
This study introduces a new forecast aggregation technique. Adding to the well- known difficulties a...
Existing approaches to combining multiple forecasts generally offer either theoretical richness or e...
Projections of future climate change caused by increasing greenhouse gases depend critically on nume...
A Bayesian methodology is used to assess the information content of categorical, probabilistic forec...
A Bayesian methodology is used to assess the information content of categorical, probabilistic forec...
We consider in this paper the problem of aggregating the output from multiple computer simulators (m...
In order to improve forecasts, a decision-maker often combines probabilities given by various source...
For the study of climate change, many General Circulation Models (GCM)s have been designed, modeling...
Mathematical models are powerful tools for epidemiology and can be used to compare control actions. ...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
<div><p>Mathematical models are powerful tools for epidemiology and can be used to compare control a...
We consider different methods for combining probability forecasts. In empirical exercises, the data ...
Recent coordinated efforts, in which numerous general circulation climate models have been run for a...
Projections of future climate change cannot rely on a single model. It has become common to rely on ...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
This study introduces a new forecast aggregation technique. Adding to the well- known difficulties a...
Existing approaches to combining multiple forecasts generally offer either theoretical richness or e...
Projections of future climate change caused by increasing greenhouse gases depend critically on nume...