Clustering consumers' shopping journeys: eye tracking fashion m-retail

IF 3.2 4区 管理学 Q2 BUSINESS
Zofija Tupikovskaja-Omovie, D. Tyler
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引用次数: 16

Abstract

Despite the rapid adoption of smartphones among digital fashion consumers, their attitude to retailers' mobile apps and websites is one of increasing dissatisfaction. This suggests that understanding how mobile consumers use smartphones for fashion shopping is important in developing digital shopping platforms that fulfil consumer' expectations.,For this research, mobile eye-tracking technology was employed in order to develop unique shopping journeys for 30 consumers, using fashion retailers' websites on smartphones, documenting their differences and similarities in browsing and purchasing behaviour.,Based on scan path visualisations and observed shopping experiences, three prominent mobile shopping journeys and shopper types were identified: “directed by retailer's website”, “efficient self-selected journey” and “challenging shopper”. These prominent behaviour patterns were used to characterise mixed cluster behaviours; three distinct mixed clusters were identified, namely, “extended self-selected journey”, “challenging shoppers directed by retailer's website” and “focused challenging shopper”.,This research argues that mobile consumers can be segmented based on their activities and behaviours on the mobile website. Knowing the prominent shopping behaviour types any other complex behaviour patterns can be identified, analysed and described.,The findings of this research can be used in developing personalised shopping experiences on smartphones by feeding these shopper types into retailers' digital marketing strategy and artificial intelligence (AI) systems.,This paper contributes to consumer behaviour literature by proposing a novel mobile consumer segmentation approach based on detailed shopping journey analysis using mobile eye-tracking technology.
聚集消费者的购物之旅:眼球追踪时尚移动零售
尽管数字时尚消费者迅速采用智能手机,但他们对零售商的移动应用程序和网站的态度越来越不满。这表明,了解移动消费者如何使用智能手机进行时尚购物,对于开发满足消费者期望的数字购物平台至关重要。,在这项研究中,使用移动眼动追踪技术,利用智能手机上的时尚零售商网站,记录他们在浏览和购买行为方面的异同,为30名消费者开发独特的购物之旅。,基于扫描路径可视化和观察到的购物体验,确定了三种突出的移动购物旅程和购物者类型:“由零售商网站指导”、“高效的自选旅程”和“富有挑战性的购物者”。这些突出的行为模式被用来表征混合集群行为;确定了三个不同的混合集群,即“扩展的自选旅程”、“零售商网站引导的挑战性购物者”和“专注的挑战性消费者”。,这项研究认为,移动消费者可以根据他们在移动网站上的活动和行为进行细分。知道突出的购物行为类型,任何其他复杂的行为模式都可以被识别、分析和描述。,这项研究的发现可以用于开发智能手机上的个性化购物体验,将这些购物者类型纳入零售商的数字营销策略和人工智能(AI)系统。,本文通过使用移动眼动追踪技术,在详细购物行程分析的基础上,提出了一种新的移动消费者细分方法,为消费者行为文献做出了贡献。
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
CiteScore
7.30
自引率
8.60%
发文量
41
期刊介绍: ■Apparel innovation ■Brand loyalty ■Consumer decisions and shopping behaviour ■Manufacturing systems ■Market positioning ■Merchandising ■Perceptions in the marketplace ■Piracy issues ■Pricing structures ■Product image ■Quality and performance measurement ■The importance of socio-economic factors In the ever-changing world of the fashion industry, it is imperative that senior managers and academics in the field are kept abreast of the latest trends and developments. Journal of Fashion Marketing and Management ensures that readers heighten their understanding of issues affecting their industry through the latest thinking and current best practice.
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