Personalized Assortment Optimization under Consumer Choice Models with Local Network Effects

Tong Xie, Zizhuo Wang
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Abstract

In this paper, we introduce a consumer choice model in which each consumer's utility is affected by the purchase probabilities of his/her neighbors in a network. Such a consumer choice model is a general model to characterize consumer choice under network effect. We first characterize the choice probabilities under such a choice model. Then we consider the associated personalized assortment optimization problem. Particularly, the seller is allowed to offer a personalized assortment to each consumer, and the consumer chooses among the products according to the proposed choice model. We show that the problem is NP-hard even if the consumers form a star network. Despite of the complexity of the problem, we show that if the consumers form a star network, then the optimal assortment to the central consumer cannot be strictly larger than that without network effects; and the optimal assortment to each peripheral consumer must be a revenue-ordered assortment that is a subset of the optimal assortment without network effect. We also present a condition when revenue-ordered assortments can achieve a provable performance. Then in view of the fact that each node in a network can represent a group of consumers, we propose a novel idea in which the sellers are allowed to offer "randomized assortments" to each node in the network. We show that allowing for randomized assortments may further increase the revenue, and under a mild condition, the optimal assortment for the central consumer must be a combination of two adjacent revenue-ordered assortments and thus efficient algorithm can be developed. Finally, we extend the results to directed acyclic graphs (DAGs), showing that a mixture of adjacent revenue-ordered assortments is optimal under certain conditions.
具有局部网络效应的消费者选择模型下的个性化分类优化
在本文中,我们引入了一个消费者选择模型,其中每个消费者的效用受其在网络中的邻居的购买概率的影响。这种消费者选择模型是表征网络效应下消费者选择的一般模型。我们首先描述了这种选择模型下的选择概率。然后考虑了相关的个性化分类优化问题。特别是,卖方可以为每个消费者提供个性化的分类,消费者根据所提出的选择模型在产品中进行选择。我们证明,即使消费者形成一个明星网络,这个问题也是np困难的。尽管问题很复杂,但我们表明,如果消费者形成一个星型网络,那么对中心消费者的最优分类不可能严格大于没有网络效应的分类;每个外围消费者的最优分类必须是一个按收入排序的分类,它是没有网络效应的最优分类的一个子集。我们还提出了收入排序分类可以实现可证明性能的条件。然后,鉴于网络中的每个节点都可以代表一组消费者,我们提出了一种新的想法,允许卖家向网络中的每个节点提供“随机分类”。我们发现,允许随机分类可以进一步增加收入,并且在温和的条件下,中心消费者的最优分类必须是两个相邻的收入排序分类的组合,从而可以开发出高效的算法。最后,我们将结果推广到有向无环图(dag),表明在某些条件下,相邻收入有序分类的混合物是最优的。
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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