Journal article

Bayesian model averaging's problematic treatment of extreme weather and a paradigm shift that fixes it

CH Bishop, KT Shanley

Monthly Weather Review | AMER METEOROLOGICAL SOC | Published : 2008

Abstract

Methods of ensemble postprocessing in which continuous probability density functions are constructed from ensemble forecasts by centering functions around each of the ensemble members have come to be called Bayesian model averaging (BMA) or "dressing" methods. Here idealized ensemble forecasting experiments are used to show that these methods are liable to produce systematically unreliable probability forecasts of climatologically extreme weather. It is argued that the failure of these methods is linked to an assumption that the distribution of truth given the forecast can be sampled by adding stochastic perturbations to state estimates, even when these state estimates have a realistic clima..

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University of Melbourne Researchers