收入
收益模型
计算机科学
收益管理
商业模式
数据科学
数据建模
利润(经济学)
数据管理
知识管理
大数据
管理科学
运筹学
业务
营销
经济
数据挖掘
工程类
财务
数据库
微观经济学
出处
期刊:Service science
[Institute for Operations Research and the Management Sciences]
日期:2023-06-01
卷期号:15 (2): 79-91
被引量:1
标识
DOI:10.1287/serv.2023.0322
摘要
Revenue management (RM) is the application of analytical methodologies and tools that predict consumer behavior and optimize product availability and prices to maximize a firm’s revenue or profit. In the last decade, data has been playing an increasingly crucial role in business decision making. As firms rely more on collected or acquired data to make business decisions, it brings opportunities and challenges to the RM research community. In this review paper, we systematically categorize the related literature by how a study is “driven” by data and focus on studies that explore the interplay between two or three of the elements: data, model, and decisions, in which the data element must be present. Specifically, we cover five data-driven RM research areas, including inference (data to model), predict then optimize (data to model to decisions), online learning (data to model to decisions to new data in a loop), end-to-end decision making (data directly to decisions), and experimental design (decisions to data to model). Finally, we point out future research directions. Funding: The research of N. Chen is partly supported by Natural Sciences and Engineering Research Council of Canada Discovery [Grant RGPIN-2020-04038]. The research of M. Hu is in part supported by Natural Sciences and Engineering Research Council of Canada [Grant RGPIN-2021-04295].
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