2022
DOI: 10.1002/nav.22068
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Stochastic approximation for uncapacitated assortment optimization under the multinomial logit model

Abstract: We consider dynamic assortment optimization with incomplete information under the uncapacitated multinomial logit choice model. We propose an anytime stochastic approximation policy and prove that the regret-the cumulative expected revenue loss caused by offering suboptimal assortments-after T time periods is bounded by √T times a constant that is independent of the number of products. In addition, we prove a matching lower bound on the regret for any policy that is valid for arbitrary model parameters-slightl… Show more

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