利用移动地理定位数据重新定义零售业覆盖范围:新西兰的启示

IF 11 1区 管理学 Q1 BUSINESS
Yihan Guan, Ka Shing Cheung, Chung Yim Yiu
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引用次数: 0

摘要

这项研究开创了一种定义和测量零售业集聚区的变革性方法,从传统的基于等时线的模型转变为基于行为和证据的框架,并充分利用了移动定位数据。与依赖静态地理边界或潜在旅行时间的传统方法不同,我们采用了地理围栏和geohash技术来绘制购物者的实际移动和行为图。这项研究通过分析来自奥克兰约 160 万用户的超过 1.17 亿个数据点的广泛数据集,提供了对零售业集聚区的理解。我们利用 DBSCAN 聚类算法和凹面船体法,根据商场游客的家庭位置,分析并可视化了集聚区的地理范围。这种精炼的方法使我们能够加深对消费者旅行模式和购物动机的理解,使零售经理能够制定更有针对性的营销和运营策略。我们的研究结果表明,传统假设的集聚区边界存在明显偏差,这为我们提供了对消费者行为和市场动态的新见解。通过重新定义覆盖区域以反映实际的消费者行为和空间互动,这项研究强调了零售业对更多数据驱动方法的迫切需要,以适应不断变化的消费者偏好和行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Redefining retail catchment with mobile geolocation data: Insights from New Zealand

This study pioneers a transformative approach to defining and measuring retail catchment areas, moving from traditional isochrone-based models to a behavioural, evidence-based framework that capitalises on mobile location data. Departing from conventional methods that rely on static geographic boundaries or potential travel times, we employ geofencing and geohash techniques to map the actual movements and behaviours of shoppers. This research offers an understanding of retail catchment areas by analysing an extensive dataset with over 117 million data points from approximately 1.6 million users in Auckland. Utilising the DBSCAN clustering algorithm and the concave hull method, we analyse and visualise the geographic extent of catchment areas based on the home-like locations of mall visitors. This refined approach enables us to deepen our comprehension of consumer travel patterns and shopping motivations, empowering retail managers to craft more targeted marketing and operational strategies. Our findings reveal marked deviations from traditionally assumed catchment boundaries, providing fresh insights into consumer behaviour and market dynamics. By redefining catchment areas to reflect actual consumer behaviour and spatial interactions, this research underscores the critical need for more data-driven approaches in the retail sector to adapt to evolving consumer preferences and behaviours.

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来源期刊
CiteScore
20.40
自引率
14.40%
发文量
340
审稿时长
20 days
期刊介绍: The Journal of Retailing and Consumer Services is a prominent publication that serves as a platform for international and interdisciplinary research and discussions in the constantly evolving fields of retailing and services studies. With a specific emphasis on consumer behavior and policy and managerial decisions, the journal aims to foster contributions from academics encompassing diverse disciplines. The primary areas covered by the journal are: Retailing and the sale of goods The provision of consumer services, including transportation, tourism, and leisure.
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