Display Optimization Under the Multinomial Logit Choice Model: Balancing Revenue and Customer Satisfaction

Jacob B. Feldman, Puping (Phil) Jiang
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引用次数: 1

Abstract

In this paper, we consider an assortment optimization problem in which a platform must choose pairwise disjoint sets of assortments to offer across a series of T stages. Arriving customers begin their search process in the first stage and progress sequentially through the stages until their patience expires, at which point they make a multinomial-logit-based purchasing decision from among all products they have viewed throughout their search process. The goal is to choose the sequential displays of product offerings to maximize expected revenue. Additionally, we impose stage-specific constraints that ensure that as each customer progresses farther and farther through the T stages, there is a minimum level of “desirability” met by the collections of displayed products. We consider two related measures of desirability: purchase likelihood and expected utility derived from the offered assortments. In this way, the offered sequence of assortment must be both high earning and well-liked, which breaks from the traditional assortment setting, where customer considerations are generally not explicitly accounted for. We show that our assortment problem of interest is strongly NP-Hard, thus ruling out the existence of a fully polynomial-time approximation scheme (FPTAS). From an algorithmic standpoint, as a warm-up, we develop a simple constant factor approximation scheme in which we carefully stitch together myopically selected assortments for each stage. Our main algorithmic result consists of a polynomial-time approximation scheme (PTAS), which combines a handful of structural results related to the make-up of the optimal assortment sequence within an approximate dynamic programming framework.
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多项Logit选择模型下的陈列优化:平衡收益与顾客满意度
在本文中,我们考虑了一个分类优化问题,其中平台必须在一系列T阶段中选择成对不相交的分类集。到达的顾客在第一阶段开始他们的搜索过程,然后依次进行,直到他们的耐心耗尽,这时他们从他们在搜索过程中看到的所有产品中做出基于多项逻辑的购买决策。目标是选择产品的顺序显示,以最大限度地提高预期收入。此外,我们施加了特定于阶段的约束,以确保随着每个客户在T阶段中的进展越来越远,所展示的产品集合满足了最低程度的“可取性”。我们考虑了两种相关的可取性度量:购买可能性和期望效用,从提供的分类中得到。通过这种方式,提供的分类序列必须既高收入又受欢迎,这打破了传统的分类设置,在传统的分类设置中,客户的考虑通常没有明确考虑。我们表明,我们感兴趣的分类问题是强NP-Hard的,因此排除了一个完全多项式时间近似方案(FPTAS)的存在。从算法的角度来看,作为热身,我们开发了一个简单的常数因子近似方案,在这个方案中,我们仔细地将每个阶段近视选择的分类拼接在一起。我们的主要算法结果由一个多项式时间近似方案(PTAS)组成,该方案结合了一些与近似动态规划框架内最优分类序列组成相关的结构结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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