用混合模型估计未观察到的无购买个性化需求:在酒店行业中的应用

IF 4.8 3区 管理学 Q1 MANAGEMENT
Sanghoon Cho, Mark Ferguson, Pelin Pekgün, Andrew Vakhutinsky
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引用次数: 1

摘要

问题定义:估计客户对收益管理解决方案的需求面临两个主要障碍:不可观察的不购买和具有不同偏好的非同质客户群体。我们提出了一种新颖实用的估计和分割方法,同时克服了这两个挑战。学术/实践相关性:我们将不可观察的无购买下的离散选择建模估计与数据驱动的客户细分识别相结合。通过与我们的行业合作伙伴Oracle Hospitality Global Business Unit的合作,我们在酒店业中展示了我们的方法。日益激烈的竞争促使酒店经营者寻求更创新的收益管理实践,例如为客人提供个性化服务。方法:我们的方法根据客人特征、旅行属性和房间特征来预测对多种酒店客房的需求。我们的框架将聚类技术与选择建模相结合,开发了多项logit离散选择模型的混合物,并使用贝叶斯推理来估计模型参数。除了预测单个客人选择房间类型的概率之外,我们的模型还提供了关于细分的额外见解,它能够根据客人的特征将每个客人划分为不同的细分(或混合细分)。结果:我们首先使用蒙特卡罗模拟表明,我们的方法在预测精度上优于几种基准方法,对选择模型参数和未购买事件的大小进行了近乎无偏的估计。然后,我们在一个真实的酒店数据集上展示了我们的方法,并说明了如何使用模型结果来驱动个性化优惠和定价的见解。管理意义:我们提出的框架为复杂的需求估计问题提供了一种实用的方法,可以帮助酒店经营者根据他们的偏好对客人进行细分,这可以作为个性化优惠选择和定价决策的宝贵输入。历史:本文已被接受为2021年制造业&服务营运管理实务研究比赛。资金:本研究由Oracle实验室(Oracle America, Inc.的一部分)提供支持[Gift 2380]。补充材料:在线附录可在https://doi.org/10.1287/msom.2022.1094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。
Estimating Personalized Demand with Unobserved No-Purchases Using a Mixture Model: An Application in the Hotel Industry
Problem definition: Estimating customer demand for revenue management solutions faces two main hurdles: unobservable no-purchases and nonhomogenous customer populations with varying preferences. We propose a novel and practical estimation and segmentation methodology that overcomes both challenges simultaneously. Academic/practical relevance: We combine the estimation of discrete choice modeling under unobservable no-purchases with a data-driven identification of customer segments. In collaboration with our industry partner, Oracle Hospitality Global Business Unit, we demonstrate our methodology in the hotel industry setting where increased competition has driven hoteliers to look for more innovative revenue management practices, such as personalized offers for their guests. Methodology: Our methodology predicts demand for multiple types of hotel rooms based on guest characteristics, travel attributes, and room features. Our framework combines clustering techniques with choice modeling to develop a mixture of multinomial logit discrete choice models and uses Bayesian inference to estimate model parameters. In addition to predicting the probability of an individual guest’s room type choice, our model delivers additional insights on segmentation with its capability to classify each guest into segments (or a mixture of segments) based on their characteristics. Results: We first show using Monte Carlo simulations that our method outperforms several benchmark methods in prediction accuracy, with nearly unbiased estimates of the choice model parameters and the size of the no-purchase incidents. We then demonstrate our method on a real hotel data set and illustrate how the model results can be used to drive insights for personalized offers and pricing. Managerial implications: Our proposed framework provides a practical approach for a complicated demand estimation problem and can help hoteliers segment their guests based on their preferences, which can serve as a valuable input for personalized offer selection and pricing decisions. History: This paper has been accepted as part of the 2021 Manufacturing & Service Operations Management Practice-Based Research Competition. Funding: This work was supported by Oracle Labs, part of Oracle America, Inc. [Gift 2380]. Supplemental Material: The online appendix is available at https://doi.org/10.1287/msom.2022.1094 .
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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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