何时分类优化是最优的?

When Is Assortment Optimization Optimal?

Management Science · 2022
被引 15
人大 A+FT50UTD24ABS 4*

中文导读

研究了在买家对固定价格商品有私人偏好的情况下,卖家通过分类或抽奖方式分配商品的最大可能收益,发现分类分配在多种常见贝叶斯先验下是最优的,从而扩展了分类优化文献的意义。

Abstract

Assortment optimization concerns the problem of selling items with fixed prices to a buyer who will purchase at most one. Typically, retailers select a subset of items, corresponding to an “assortment” of brands to carry, and make each selected item available for purchase at its brand-recommended price. Despite the tremendous importance in practice, the best method for selling these fixed-price items is not well understood, as retailers have begun experimenting with making certain items available only through a lottery. In this paper, we analyze the maximum possible revenue that can be earned in this setting, given that the buyer’s preference is private, but drawn from a known distribution. In particular, we introduce a Bayesian mechanism-design problem where the buyer has a random ranking over fixed-price items and an outside option, and the seller optimizes a (randomized) allocation of up to one item. We show that allocations corresponding to assortments are suboptimal in general, but under many commonly studied Bayesian priors for buyer rankings, such as the Multinomial Logit and Markov Chain choice models, assortments are, in fact, optimal. Therefore, this large literature on assortment optimization has much greater significance than appreciated before—it is not only computing optimal assortments; it is computing the economic limit of the seller’s revenue for selling these fixed-price substitute items. We derive several further results—a more general sufficient condition for assortments being optimal that captures choice models beyond Markov Chain; a proof that Nested Logit choice models cannot be captured by Markov Chain, but can, to some extent, be captured by our condition; and suboptimality gaps for assortments when our condition does not hold. Finally, we show that our mechanism-design problem provides the tightest-known Linear Programming relaxation for assortment optimization under the ranking distribution model. This paper was accepted by Itai Ashlagi, revenue management and market analytics. Supplemental Material: The online appendix is available at https://doi.org/10.1287/mnsc.2022.4471 .

品种优化贝叶斯机制设计随机偏好选择模型