工程社会学习:在线平台限时销售活动的信息设计

Can Küçükgül, Ö. Özer, Shouqiang Wang
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引用次数: 14

摘要

许多在线平台提供限时销售活动,即产品在预定的时间内以固定价格销售。平台通常会在活动期间显示一些关于之前客户购买决策的信息。利用动态贝叶斯说服框架,我们研究了收益最大化平台在这种情况下如何优化其信息策略。我们通过减少消息空间和专有历史的维度来重新表述平台的问题。具体来说,三个信息就足够了:一个中性的推荐,诱导顾客根据她对产品的私人信号做出购买决定;一个积极的(分别(resp.),消极的)推荐,诱导她购买(resp.)。(不是购买)通过忽略她的信号。该平台的专有历史可以用净购买头寸来表示,净购买头寸是一种单维汇总统计数据,用于计算收到中性推荐的客户购买与未购买之间的累积差异。随后,我们建立了最优策略的结构属性,并揭示了平台的基本权衡:长期信息(和收入)产生与短期收入提取。进一步,我们提出并优化了一类启发式策略。最优启发式策略仅在截止客户之前提供中性推荐,之后仅提供正面或负面推荐,当且仅当截止客户之后的净购买头寸超过阈值时,推荐为正面。该策略易于实现,并且在数值上表现良好。最后,我们通过放松一些信息假设来证明我们方法的一般性和我们发现的稳健性。本文被收益管理和市场分析专业的Gabriel Weintraub接受。
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Engineering Social Learning: Information Design of Time-Locked Sales Campaigns for Online Platforms
Many online platforms offer time-locked sales campaigns, whereby products are sold at fixed prices for prespecified lengths of time. Platforms often display some information about previous customers’ purchase decisions during campaigns. Using a dynamic Bayesian persuasion framework, we study how a revenue-maximizing platform should optimize its information policy for such a setting. We reformulate the platform’s problem equivalently by reducing the dimensionality of its message space and proprietary history. Specifically, three messages suffice: a neutral recommendation that induces a customer to make her purchase decision according to her private signal about the product and a positive (respectively (resp.), negative) recommendation that induces her to purchase (resp., not purchase) by ignoring her signal. The platform’s proprietary history can be represented by the net purchase position, a single-dimensional summary statistic that computes the cumulative difference between purchases and nonpurchases made by customers having received the neutral recommendation. Subsequently, we establish structural properties of the optimal policy and uncover the platform’s fundamental trade-off: long-term information (and revenue) generation versus short-term revenue extraction. Further, we propose and optimize over a class of heuristic policies. The optimal heuristic policy provides only neutral recommendations up to a cutoff customer and provides only positive or negative recommendations afterward, with the recommendation being positive if and only if the net purchase position after the cutoff customer exceeds a threshold. This policy is easy to implement and numerically shown to perform well. Finally, we demonstrate the generality of our methodology and the robustness of our findings by relaxing some informational assumptions. This paper was accepted by Gabriel Weintraub, revenue management and market analytics.
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