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Fully Gap-Dependent Bounds for Multinomial Logit Bandit (2011.09998v1)

Published 19 Nov 2020 in cs.LG

Abstract: We study the multinomial logit (MNL) bandit problem, where at each time step, the seller offers an assortment of size at most $K$ from a pool of $N$ items, and the buyer purchases an item from the assortment according to a MNL choice model. The objective is to learn the model parameters and maximize the expected revenue. We present (i) an algorithm that identifies the optimal assortment $S*$ within $\widetilde{O}(\sum_{i = 1}N \Delta_i{-2})$ time steps with high probability, and (ii) an algorithm that incurs $O(\sum_{i \notin S*} K\Delta_i{-1} \log T)$ regret in $T$ time steps. To our knowledge, our algorithms are the first to achieve gap-dependent bounds that fully depends on the suboptimality gaps of all items. Our technical contributions include an algorithmic framework that relates the MNL-bandit problem to a variant of the top-$K$ arm identification problem in multi-armed bandits, a generalized epoch-based offering procedure, and a layer-based adaptive estimation procedure.

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