Probabilistic decision graphs for optimization under uncertainty

Probabilistic decision graphs for optimization under uncertainty

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Article ID: iaor20132693
Volume: 204
Issue: 1
Start Page Number: 223
End Page Number: 248
Publication Date: Apr 2013
Journal: Annals of Operations Research
Authors: ,
Keywords: graphs
Abstract:

This paper provides a survey on probabilistic decision graphs for modeling and solving decision problems under uncertainty. We give an introduction to influence diagrams, which is a popular framework for representing and solving sequential decision problems with a single decision maker. As the methods for solving influence diagrams can scale rather badly in the length of the decision sequence, we present a couple of approaches for calculating approximate solutions. The modeling scope of the influence diagram is limited to so‐called symmetric decision problems. This limitation has motivated the development of alternative representation languages, which enlarge the class of decision problems that can be modeled efficiently. We present some of these alternative frameworks and demonstrate their expressibility using several examples. Finally, we provide a list of software systems that implement the frameworks described in the paper.

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