通过动态分类了解消费者的口味

C. Ulu, Dorothée Honhon, Aydın Alptekinoğlu
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引用次数: 57

摘要

当了解到消费者的口味后,公司应该如何调整产品种类?在本文中,我们研究了一个水平差异化产品类别的动态分类决策,消费者的不同口味可以表示为Hotelling线上的位置。我们假设公司知道所有可能的消费者位置,构成一个有限的集合,但不知道它们的概率分布。我们将此问题建模为离散时间动态规划;在每个时期,公司都会选择一种产品,并设定价格,以在有限的时间内最大化总预期利润,这是基于其对消费者品味的主观信念。然后,消费者从各种各样的产品中选择一种使自己的效用最大化的产品。该公司观察销售情况,提供有关消费者口味的审查信息,并以贝叶斯方式更新信念。在当期销售的直接利润(开发)和未来所有时期的信息收益(开发)之间存在着一种反复出现的权衡。我们证明了人们可以(部分地)根据分类的信息内容对分类进行排序,并且在任何给定时期,最优分类的信息量不能少于近视最优分类。这个结果类似于众所周知的“库存更多”导致的审查报贩问题,报贩通过销售了解需求,而销售损失是无法观察到的。我们证明,对于公司来说,在探索和开发之间交替进行可能是最优的,甚至提供导致当前损失的分类,以获得消费者口味的信息。建立了贝叶斯共轭模型,减小了动态规划的状态空间,并对该模型的学习价值进行了研究。
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Learning Consumer Tastes through Dynamic Assortments
How should a firm modify its product assortment over time when learning about consumer tastes? In this paper, we study dynamic assortment decisions in a horizontally differentiated product category for which consumers' diverse tastes can be represented as locations on a Hotelling line. We presume that the firm knows all possible consumer locations, comprising a finite set, but does not know their probability distribution. We model this problem as a discrete-time dynamic program; each period, the firm chooses an assortment and sets prices to maximize the total expected profit over a finite horizon, given its subjective beliefs over consumer tastes. The consumers then choose a product from the assortment that maximizes their own utility. The firm observes sales, which provide censored information on consumer tastes, and it updates beliefs in a Bayesian fashion. There is a recurring trade-off between the immediate profits from sales in the current period (exploitation) and the informational gains to be exploited in all future periods (exploration). We show that one can (partially) order assortments based on their information content and that in any given period the optimal assortment cannot be less informative than the myopically optimal assortment. This result is akin to the well-known “stock more” result in censored newsvendor problems with the newsvendor learning about demand through sales when lost sales are not observable. We demonstrate that it can be optimal for the firm to alternate between exploration and exploitation, and even offer assortments that lead to losses in the current period in order to gain information on consumer tastes. We also develop a Bayesian conjugate model that reduces the state space of the dynamic program and study value of learning using this conjugate model.
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