Assortment Optimization for a Multi-Stage Choice Model

Yunzong Xu, Zizhuo Wang
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引用次数: 5

Abstract

Motivated by several practical selling scenarios that require previous purchases to unlock future options, we consider a multi-stage assortment optimization problem, where the seller makes sequential assortment decisions with commitment, and the customer makes sequential choices to maximize her expected utility. We study the optimal solution to the problem when there are two stages. We show that this problem is polynomial-time solvable when the customer is fully myopic or fully forward-looking. In particular, when the customer is fully forward-looking, the optimal policy entails that the assortment in each stage is revenue-ordered and a product with higher revenue always leads to a wider range of future options. Moreover, we find that the optimal assortment in the first stage must be smaller than the optimal assortment when there were no second stage and the optimal assortment in the second stage must be larger than the optimal assortment when there were no first stage. When the customer is partially forward-looking, we show that the problem is NP-hard in general. In this case, we present efficient algorithms to solve this problem under various scenarios. We further extend the above results to the multi-stage problem with an arbitrary number of stages, for which we derive generalized structural properties and efficient algorithms. We also study the performance of a class of static policies and discuss the estimation problem of the multi-stage choice model.
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多阶段选择模型的分类优化
基于几个实际的销售场景,我们考虑了一个多阶段分类优化问题,其中卖方做出有承诺的顺序分类决策,客户做出顺序选择以最大化其期望效用。我们研究了当问题有两个阶段时的最优解。我们表明,当客户完全近视或完全前瞻性时,这个问题是多项式时间可解的。特别是,当客户完全向前看时,最优策略要求每个阶段的分类都是按收入排序的,收入较高的产品总是导致更大范围的未来选择。并且,我们发现第一阶段的最优配种必须小于不存在第二阶段时的最优配种,第二阶段的最优配种必须大于不存在第一阶段时的最优配种。当客户具有部分前瞻性时,我们通常会显示问题是np困难的。在这种情况下,我们提出了在各种场景下解决该问题的有效算法。我们进一步将上述结果推广到具有任意阶段数的多阶段问题,并得到了该问题的广义结构性质和有效算法。我们还研究了一类静态策略的性能,并讨论了多阶段选择模型的估计问题。
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