Assortment Optimization under Unknown MultiNomial Logit Choice Models
Machine Learning
2017-04-04 v1
Abstract
Motivated by e-commerce, we study the online assortment optimization problem. The seller offers an assortment, i.e. a subset of products, to each arriving customer, who then purchases one or no product from her offered assortment. A customer's purchase decision is governed by the underlying MultiNomial Logit (MNL) choice model. The seller aims to maximize the total revenue in a finite sales horizon, subject to resource constraints and uncertainty in the MNL choice model. We first propose an efficient online policy which incurs a regret , where is the number of customers in the sales horizon. Then, we propose a UCB policy that achieves a regret . Both regret bounds are sublinear in the number of assortments.
Cite
@article{arxiv.1704.00108,
title = {Assortment Optimization under Unknown MultiNomial Logit Choice Models},
author = {Wang Chi Cheung and David Simchi-Levi},
journal= {arXiv preprint arXiv:1704.00108},
year = {2017}
}
Comments
16 pages, 2 figures