在大型和频繁变化的商店分类中发现在线购物偏好结构

IF 5.1 1区 管理学 Q1 BUSINESS Journal of Marketing Research Pub Date : 2022-09-21 DOI:10.1177/00222437221130722
Min Kim, Jie Zhang
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引用次数: 2

摘要

作者开发了一个基于属性的混合成员关系模型,该模型反映了消费者对商店产品组合中库存单位的偏好。该模型将推动购物行为的潜在“感兴趣的主题”表示为产品属性的概率分布。它克服了潜在狄利克雷分配主题模型的几个局限性,特别适用于在频繁变化的大型商店分类中进行偏好预测。作者将所提出的模型应用于研究时尚产品在线交易市场中推动浏览和购买活动的主题,并探索偏好结构如何随着时间的推移而演变。他们发现,在推动网上购物过程的浏览和购买阶段的主题中,存在共性和差异。一般来说,浏览所涵盖的产品属性比购买范围更广。消费者倾向于在交易市场上浏览高端定位和/或大幅折扣的产品,但在购买时,他们倾向于以原价和适度折扣购买较低级别的产品。作者举例说明了如何利用所提出的模型的见解,根据消费者的价格偏好对其进行分析,并改进个性化产品推荐。他们表明,该模型在预测现有产品组合中没有的新产品的偏好方面表现得特别好。
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Discovering Online Shopping Preference Structures in Large and Frequently Changing Store Assortments
The authors develop an attribute-based mixed-membership model of consumers’ preference for stockkeeping units in store assortments. The model represents the underlying “topics of interest” that drive shopping behaviors as probability distributions over product attributes. It overcomes several limitations of latent Dirichlet allocation topic models and is particularly useful for making preference predictions in large and frequently changing store assortments. The authors apply the proposed model to investigate topics driving browsing and purchase activities in an online deal marketplace of fashion products and explore how preference structures evolve over time. They find commonalities and differences in the topics that drive the browsing and purchase stages of online shopping processes. In general, browsing covers a broader range of product attributes than purchases. Consumers tend to browse products of premium positioning and/or deep discounts in the deal marketplace, but when purchasing, they tend to gravitate toward lower-tiered products at their original prices and modest depths of discounts. The authors illustrate how insights from the proposed model can be utilized to profile consumers based on their price preferences and to improve personalized product recommendations. They show that the model's performance is particularly strong in predicting preferences for new products that are not in the existing assortment.
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来源期刊
CiteScore
10.30
自引率
6.60%
发文量
79
期刊介绍: JMR is written for those academics and practitioners of marketing research who need to be in the forefront of the profession and in possession of the industry"s cutting-edge information. JMR publishes articles representing the entire spectrum of research in marketing. The editorial content is peer-reviewed by an expert panel of leading academics. Articles address the concepts, methods, and applications of marketing research that present new techniques for solving marketing problems; contribute to marketing knowledge based on the use of experimental, descriptive, or analytical techniques; and review and comment on the developments and concepts in related fields that have a bearing on the research industry and its practices.
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