In this paper we develop a unified approach for solving a wide class of sequential selection problems. This class includes, but is not limited to, selection problems with no-information, rank-dependent rewards, and considers both fixed as well as random problem horizons. The proposed framework is based on a reduction of the original selection problem to one of optimal stopping for a sequence of judiciously constructed independent random variables. We demonstrate that our approach allows exact and efficient computation of optimal policies and various performance metrics thereof for a variety of sequential selection problems, several of which have not been solved to date.
CITATION STYLE
Goldenshluger, A., Malinovsky, Y., & Zeevi, A. (2020). A unified approach for solving sequential selection problems. Probability Surveys, 70, 214–256. https://doi.org/10.1214/19-PS333
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