{"title":"需求信息不完全的横向差异化产品的定价与定位","authors":"Arnoud V. den Boer, Boxiao Chen, Yining Wang","doi":"10.1287/opre.2021.0093","DOIUrl":null,"url":null,"abstract":"<p>We consider the problem of determining the optimal prices and product configurations of horizontally differentiated products when customers purchase according to a locational (Hotelling) choice model and where the problem parameters are initially unknown to the decision maker. 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引用次数: 0
摘要
我们考虑的问题是,当客户根据定位(Hotelling)选择模型进行购买时,如何确定横向差异化产品的最优价格和产品配置,而决策者最初并不知道问题的参数。对于单产品和多产品设置,我们都提出了一种数据驱动算法,该算法能从累积的销售数据中学习最优价格和产品配置,并证明了其遗憾值--即在 T 个时间段后因未使用最优决策而造成的预期累积损失--为 O(T1/2+o(1))。同时,我们还证明,即使在单一产品的情况下,任何算法的遗憾值都会被一个恒定时间 T1/2 从下往上限定,这意味着我们的算法在渐近上接近最优。在扩展中,我们展示了如何将我们的算法适用于位置固定的情况。将我们的算法与三个基准进行比较的数值研究表明,我们的算法在有限时间范围内也具有竞争力:在线附录见 https://doi.org/10.1287/opre.2021.0093。
Pricing and Positioning of Horizontally Differentiated Products with Incomplete Demand Information
We consider the problem of determining the optimal prices and product configurations of horizontally differentiated products when customers purchase according to a locational (Hotelling) choice model and where the problem parameters are initially unknown to the decision maker. Both for the single-product and multiple-product setting, we propose a data-driven algorithm that learns the optimal prices and product configurations from accumulating sales data, and we show that their regret—the expected cumulative loss caused by not using optimal decisions—after T time periods is . We accompany this result by showing that, even in the single-product setting, the regret of any algorithm is bounded from below by a constant time , implying that our algorithms are asymptotically near optimal. In an extension, we show how our algorithm can be adapted for the case of fixed locations. A numerical study that compares our algorithms with three benchmarks shows that our algorithm is also competitive on a finite time horizon.
Supplemental Material: The online appendix is available at https://doi.org/10.1287/opre.2021.0093.
期刊介绍:
Operations Research publishes quality operations research and management science works of interest to the OR practitioner and researcher in three substantive categories: methods, data-based operational science, and the practice of OR. The journal seeks papers reporting underlying data-based principles of operational science, observations and modeling of operating systems, contributions to the methods and models of OR, case histories of applications, review articles, and discussions of the administrative environment, history, policy, practice, future, and arenas of application of operations research.