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Action-timing problem with sequential Bayesian belief revision process

✍ Scribed by Jae-Hyeon Ahn; John J. Kim


Book ID
104339489
Publisher
Elsevier Science
Year
1998
Tongue
English
Weight
754 KB
Volume
105
Category
Article
ISSN
0377-2217

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✦ Synopsis


We consider the problem of deciding the best action time when observations are made sequentially. Specifically we address a special type of optimal stopping problem where observations are made from state-contingent distributions and there exists uncertainty on the state. In this paper, the decision-maker's belief on state is revised sequentially based on the previous observations. By using the independence property of the observations from a given distribution, the sequential Bayesian belief revision process is represented as a simple recursive form. The methodology developed in this paper provides a new theoretical framework for addressing the uncertainty on state in the action-timing problem context. By conducting a simulation analysis, we demonstrate the value of applying Bayesian strategy which uses sequential belief revision process. In addition, we evaluate the value of perfect information to gain more insight on the effects of using Bayesian strategy in the problem.