DEPART:使用算术回归树分解价格

IF 5.9 2区 管理学 Q1 BUSINESS
Huidi Lu , Ralf van der Lans , Kristiaan Helsen , Dinesh K. Gauri
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引用次数: 0

摘要

常规价格和临时折扣是零售商和品牌定价决策的重要因素。这两个变量需要单独考虑,因为消费者对其变化的敏感度通常不同。尽管近年来零售数据集的范围和丰富程度都在迅速增长,但大多数数据集只记录了客户实际支付的价格,缺乏常规价格和折扣的直接信息。一项涉及近500份出版物的系统审查证实了这一点,这些出版物使用零售扫描仪数据调查了价格变量,因为63%的出版物只观察到实际价格。为了解决这一数据缺失问题,这些研究通常采用启发式方法将实际价格分解为常规价格和折扣深度。然而,有许多这样的启发式,其准确性尚未得到评估。本研究介绍了一种新的机器学习方法,基于回归树和公开可用的R包,并将其与之前在两个不同数据集中使用的启发式方法进行基准测试。结果表明,平均而言,所提出的方法比以前使用的启发式方法高出26.5%或更多。另外的分析说明了采用分离模型来改进定价决策的潜在经济效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DEPART: Decomposing prices using atheoretical regression trees

Regular prices and temporary discounts are important elements for retailers’ and brands’ pricing decisions. These two variables need to be considered separately because consumer sensitivities to their changes typically differ. Although the scope and richness of retail datasets have grown rapidly in recent years, most of them only record actual prices paid by customers and lack direct information about regular prices and discounts. A systematic review involving close to five hundred publications that investigated pricing variables using retail scanner data confirms this, as 63% of them only observed actual prices. To solve this missing data problem, these studies often adopted heuristics to decompose actual prices into regular prices and discount depths. However, there are many such heuristics and their accuracies have not been assessed. This research introduces DEPART, a new machine learning approach based on regression trees with a publicly available R package and benchmarks it against previously used heuristics in two different datasets. The results show that on average the proposed method outperforms previously used heuristics by 26.5% or more. Additional analyses illustrate the potential economic benefits of adopting DEPART to improve pricing decisions.

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来源期刊
CiteScore
11.80
自引率
4.30%
发文量
77
审稿时长
66 days
期刊介绍: The International Journal of Research in Marketing is an international, double-blind peer-reviewed journal for marketing academics and practitioners. Building on a great tradition of global marketing scholarship, IJRM aims to contribute substantially to the field of marketing research by providing a high-quality medium for the dissemination of new marketing knowledge and methods. Among IJRM targeted audience are marketing scholars, practitioners (e.g., marketing research and consulting professionals) and other interested groups and individuals.
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