Pricing for Heterogeneous Products: Analytics for Ticket Reselling

IF 4.8 3区 管理学 Q1 MANAGEMENT M&som-Manufacturing & Service Operations Management Pub Date : 2023-03-01 DOI:10.1287/msom.2021.1065
Michael Alley, Max Biggs, Rim Hariss, Charles Herrmann, Michael Lingzhi Li, Georgia Perakis
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引用次数: 3

Abstract

Problem definition: We present a data-driven study of the secondary ticket market. In particular, we are primarily concerned with accurately estimating price sensitivity for listed tickets. In this setting, there are many issues including endogeneity, heterogeneity in price sensitivity for different tickets, binary outcomes, and nonlinear interactions between ticket features. Our secondary goal is to highlight how this estimation can be integrated into a prescriptive trading strategy for buying and selling tickets in an active marketplace. Academic/practical relevance: We present a novel method for demand estimation with heterogeneous treatment effect in the presence of confounding. In practice, we embed this method within an optimization framework for ticket reselling, providing the ticket reselling platform with a new framework for pricing tickets on its platform. Methodology: We introduce a general double/orthogonalized machine learning method for classification problems. This method allows us to isolate the causal effects of price on the outcome by removing the conditional effects of the ticket and market features. Furthermore, we introduce a novel loss function that can be easily incorporated into powerful, off-the-shelf machine learning algorithms, including gradient boosted trees. We show how, in the presence of hidden confounding variables, instrumental variables can be incorporated. Results: Using a wide range of synthetic data sets, we show this approach beats state-of-the-art machine learning and causal inference approaches for estimating treatment effects in the classification setting. Furthermore, using National Basketball Association ticket listings from the 2014–2015 season, we show that probit models with instrumental variables, previously used for price estimation of tickets in the resale market, are significantly less accurate and potentially misspecified relative to our proposed approach. Through pricing simulations, we show our proposed method can achieve an 11% return on investment by buying and selling tickets, whereas existing techniques are not profitable. Managerial implications: The knowledge of how to price tickets on its platform offers a range of potential opportunities for our collaborator, both in terms of understanding sellers on their platform and in developing new products to offer them. History: This paper has been accepted as part of the 2019 Manufacturing & Service Operations Management Practice-Based Research Competition. Funding: This work was supported by the National Science Foundation [Grant CMMI-1563343]. Supplemental Material: The online appendices are available at https://doi.org/10.1287/msom.2021.1065 .
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异构产品定价:票务转售分析
问题定义:我们提出了一个二级票务市场的数据驱动研究。特别是,我们主要关心的是准确估计列出的门票的价格敏感性。在这种情况下,存在许多问题,包括内生性、不同门票价格敏感性的异质性、二元结果以及门票特征之间的非线性相互作用。我们的第二个目标是强调如何将这种估计集成到一个规范的交易策略中,以便在一个活跃的市场中买卖门票。学术/实际意义:我们提出了一种新的方法,用于在存在混杂的情况下具有异质处理效果的需求估计。在实践中,我们将该方法嵌入到票务转售的优化框架中,为票务转售平台在其平台上的票务定价提供了一个新的框架。方法:我们介绍了一种用于分类问题的通用双/正交机器学习方法。这种方法允许我们通过去除门票和市场特征的条件效应来隔离价格对结果的因果影响。此外,我们引入了一种新的损失函数,可以很容易地整合到强大的、现成的机器学习算法中,包括梯度增强树。我们展示了在存在隐藏混淆变量的情况下,如何将工具变量纳入其中。结果:使用广泛的合成数据集,我们表明这种方法优于最先进的机器学习和因果推理方法,用于估计分类设置中的治疗效果。此外,使用2014-2015赛季的nba门票列表,我们表明,与我们提出的方法相比,以前用于转售市场门票价格估计的工具变量probit模型的准确性显着降低,并且可能存在错误指定。通过定价模拟,我们表明我们提出的方法可以通过买卖门票实现11%的投资回报率,而现有的技术是不盈利的。管理意义:如何在其平台上为门票定价的知识为我们的合作伙伴提供了一系列潜在的机会,无论是在了解他们平台上的卖家方面,还是在为他们开发新产品方面。历史:本文已被接受为2019年制造业&服务营运管理实务研究比赛。资助:本研究由美国国家科学基金会资助[Grant CMMI-1563343]。补充材料:在线附录可在https://doi.org/10.1287/msom.2021.1065上获得。
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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来源期刊
M&som-Manufacturing & Service Operations Management
M&som-Manufacturing & Service Operations Management 管理科学-运筹学与管理科学
CiteScore
9.30
自引率
12.70%
发文量
184
审稿时长
12 months
期刊介绍: M&SOM is the INFORMS journal for operations management. The purpose of the journal is to publish high-impact manuscripts that report relevant research on important problems in operations management (OM). The field of OM is the study of the innovative or traditional processes for the design, procurement, production, delivery, and recovery of goods and services. OM research entails the control, planning, design, and improvement of these processes. This research can be prescriptive, descriptive, or predictive; however, the intent of the research is ultimately to develop some form of enduring knowledge that can lead to more efficient or effective processes for the creation and delivery of goods and services. M&SOM encourages a variety of methodological approaches to OM research; papers may be theoretical or empirical, analytical or computational, and may be based on a range of established research disciplines. M&SOM encourages contributions in OM across the full spectrum of decision making: strategic, tactical, and operational. Furthermore, the journal supports research that examines pertinent issues at the interfaces between OM and other functional areas.
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