Nathan Huntley
An efficient normal form solution to decision trees with lower previsions.
Huntley, Nathan; Troffaes, Matthias
Abstract
Decision trees are useful graphical representations of sequential decision problems. We consider decision trees where events are assigned imprecise probabilities, and examine their normal form decisions; that is, scenarios in which the subject initially decides all his future choices. We present a backward induction method for efficiently finding the set of optimal normal form decisions under maximality. Our algorithm is similar to traditional backward induction for solving extensive forms in that we solve smaller subtrees first, however it is different in that solutions of subtrees are only used as intermediate steps to reach the full solution more efficiently---in particular, under maximality, a decision that is optimal in a subtree can be potentially absent in any optimal policy in the full tree.
Citation
Huntley, N., & Troffaes, M. (2008, December). An efficient normal form solution to decision trees with lower previsions. Presented at Fourth International Workshop on Soft Methods in Probability and Statistics, Toulouse, France
Presentation Conference Type | Conference Paper (published) |
---|---|
Conference Name | Fourth International Workshop on Soft Methods in Probability and Statistics |
Publication Date | 2008 |
Publisher | Springer Verlag |
Pages | 419-426 |
Series Title | Advances in Soft Computing: Soft Methods for Handling Variability and Imprecision |
Public URL | https://durham-repository.worktribe.com/output/1161178 |
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