Original paper

Sequential Search and Learning from Rank Feedback: Theory and Experimental Evidence

Published: Jan 1, 2013
Abstract
This paper studies the effect of limited information in a sequential search setting where a single selection is to be made from a set of random potential options. We consider both a full-information problem, where the decision maker observes the exact value of each option as she searches, and a partial-information problem, in which the decision maker only learns the rank of the current option relative to the options that have already been...
Paper Details
Title
Sequential Search and Learning from Rank Feedback: Theory and Experimental Evidence
Published Date
Jan 1, 2013
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