Diffusion Approximations for a Class of Sequential Experimentation Problems

dc.contributor.authorAraman, Victor F.
dc.contributor.authorCaldentey, René A.
dc.contributor.departmentOSB
dc.contributor.facultySuliman S. Olayan School of Business (OSB)
dc.contributor.institutionAmerican University of Beirut
dc.date.accessioned2025-01-24T12:15:57Z
dc.date.available2025-01-24T12:15:57Z
dc.date.issued2022
dc.description.abstractA decision maker (DM) must choose an action in order to maximize a reward function that depends on the DM’s action as well as on an unknown parameter Θ. The DM can delay taking the action in order to experiment and gather additional information on Θ. We model the problem using a Bayesian sequential experimentation framework and use dynamic programming and diffusion-asymptotic analysis to solve it. For that, we consider environments in which the average number of experiments that is conducted per unit of time is large and the informativeness of each individual experiment is low. Under such regimes, we derive a diffusion approximation for the sequential experimentation problem, which provides a number of important insights about the nature of the problem and its solution. First, it reveals that the problems of (i) selecting the optimal sequence of experiments to use and (ii) deciding the optimal time when to stop experimenting decouple and can be solved independently. Second, it shows that an optimal experimentation policy is one that chooses the experiment that maximizes the instantaneous volatility of the belief process. Third, the diffusion approximation provides a more mathematically malleable formulation that we can solve in closed form and suggests efficient heuristics for the nonasympototic regime. Our solution method also shows that the complexity of the problem grows only quadratically with the cardinality of the set of actions from which the decision maker can choose. We illustrate our methodology and results using a concrete application in the context of assortment selection and new product introduction. Specifically, we study the problem of a seller who wants to select an optimal assortment of products to launch into the marketplace and is uncertain about consumers’ preferences. Motivated by emerging practices in e-commerce, we assume that the seller is able to use a crowd voting system to learn these preferences before a final assortment decision is made. In this context, we undertake an extensive numerical analysis to assess the value of learning and demonstrate the effectiveness and robustness of the heuristics derived from the diffusion approximation. © 2021 INFORMS.
dc.identifier.doihttps://doi.org/10.1287/mnsc.2021.4195
dc.identifier.eid2-s2.0-85138460974
dc.identifier.urihttp://hdl.handle.net/10938/33483
dc.language.isoen
dc.publisherINFORMS Inst.for Operations Res.and the Management Sciences
dc.relation.ispartofManagement Science
dc.sourceScopus
dc.subjectBayesian demand learning
dc.subjectCrowdvoting
dc.subjectDynamic programming
dc.subjectExperiment design
dc.subjectExperimentation
dc.subjectOptimal stopping
dc.subjectSequential testing
dc.subjectAsymptotic analysis
dc.subjectDecision making
dc.subjectDiffusion
dc.subjectStatistical tests
dc.subjectBayesian
dc.subjectDecision makers
dc.subjectDemand learning
dc.subjectDiffusion approximations
dc.titleDiffusion Approximations for a Class of Sequential Experimentation Problems
dc.typeArticle

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