Title
Getting the Right Mix of Experts
Abstract
The Bayesian approach to combining expert opinions is well developed, providing a decision maker's posterior beliefs after receiving advice from people with deep knowledge in a given subject. A necessary part of these models is the inclusion of dependencies between the experts' judgments, often justified by an overlap in the information on which the experts base their judgments. In this paper, we propose a hierarchical structure different than those previously proposed, where the mixing distribution is treated nonparametrically with a Dirichlet process. This makes our overall model a Dirichlet process mixture and allows for experts' model parameters to be equal in the mixture. We apply this approach to published expert judgment data, demonstrating that the decision maker's posterior distributions on the quantities of interest are not restricted to specific parametric forms, even allowing for multiple modes, and are thus more intuitively appealing.
Year
DOI
Venue
2008
10.1287/deca.1080.0108
Decision Analysis
Keywords
DocType
Volume
Dirichlet process mixture,posterior belief,overall model,Bayesian approach,Dirichlet process,expert opinion,Right Mix,published expert judgment data,model parameter,posterior distribution,decision maker
Journal
5
Issue
Citations 
PageRank 
1
7
0.46
References 
Authors
2
1
Name
Order
Citations
PageRank
Jason R. W. Merrick113516.29