Characterizing and Visualizing Predictive Uncertainty in Numerical Ensembles Through Bayesian Model Averaging

Luke Gosink(Pacific Northwest National Laboratory), Kevin Bensema(Pacific Northwest National Laboratory), Trenton C. Pulsipher(Pacific Northwest National Laboratory), Harald Obermaier(University of California, Davis), Michael J. Henry(University of California, Davis), Hank Childs(University of California, Davis), Kenneth I. Joy(University of California, Davis)
IEEE Transactions on Visualization and Computer Graphics
October 16, 2013
Cited by 30

Abstract

Numerical ensemble forecasting is a powerful tool that drives many risk analysis efforts and decision making tasks. These ensembles are composed of individual simulations that each uniquely model a possible outcome for a common event of interest: e.g., the direction and force of a hurricane, or the path of travel and mortality rate of a pandemic. This paper presents a new visual strategy to help quantify and characterize a numerical ensemble's predictive uncertainty: i.e., the ability for ensemble constituents to accurately and consistently predict an event of interest based on ground truth observations. Our strategy employs a Bayesian framework to first construct a statistical aggregate from the ensemble. We extend the information obtained from the aggregate with a visualization strategy that characterizes predictive uncertainty at two levels: at a global level, which assesses the ensemble as a whole, as well as a local level, which examines each of the ensemble's constituents. Through this approach, modelers are able to better assess the predictive strengths and weaknesses of the ensemble as a whole, as well as individual models. We apply our method to two datasets to demonstrate its broad applicability.


Related Papers

No related papers found

Powered by citation graph analysis