Digital transformation technologies to analyze product returns in the e-commerce industry

IF 7.4 3区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
S. K. Jauhar, B. Chakma, Sachin S. Kamble, Amine Belhadi
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引用次数: 1

Abstract

PurposeAs e-commerce has expanded rapidly, online shopping platforms have become widespread in India and throughout the world. Product return, which has a negative effect on the E-Commerce Industry's economic and ecological sustainability, is one of the E-Commerce Industry's greatest challenges in light of the substantial increase in online transactions. The authors have analyzed the purchasing patterns of the customers to better comprehend their product purchase and return patterns.Design/methodology/approachThe authors utilized digital transformation techniques-based recency, frequency and monetary models to better understand and segment potential customers in order to address personalized strategies to increase sales, and the authors performed seller clustering using k-means and hierarchical clustering to determine why some sellers have the most sales and what products they offer that entice customers to purchase.FindingsThe authors discovered, through the application of digital transformation models to customer segmentation, that over 61.15% of consumers are likely to purchase, loyal customers and utilize firm service, whereas approximately 35% of customers have either stopped purchasing or have relatively low spending. To retain these consumer segments, special consideration and an enticing offer are required. As the authors dug deeper into the seller clustering, we discovered that the maximum number of clusters is six, while certain clusters indicate that prompt delivery of the goods plays a crucial role in customer feedback and high sales volume.Originality/valueThis is one of the rare study that develops a seller segmentation strategy by utilizing digital transformation-based methods in order to achieve seller group division.
数字化转型技术分析电子商务行业的产品退货
随着电子商务的迅速发展,网上购物平台在印度和世界各地都很普遍。产品退货对电子商务行业的经济和生态可持续性产生负面影响,是电子商务行业在网上交易大幅增加的情况下面临的最大挑战之一。作者分析了顾客的购买模式,以更好地了解他们的产品购买和退货模式。设计/方法/方法作者利用基于近代性、频率和货币模型的数字化转换技术来更好地理解和细分潜在客户,以解决个性化策略以增加销售,作者使用k-means和分层聚类执行卖家聚类,以确定为什么一些卖家的销售额最高,以及他们提供的产品吸引客户购买。研究结果作者发现,通过将数字化转型模型应用于客户细分,超过61.15%的消费者可能会购买,忠诚的客户并使用公司的服务,而大约35%的客户已经停止购买或支出相对较低。为了留住这些消费者群体,需要特别考虑并提供诱人的报价。随着作者对卖家集群的深入研究,我们发现集群的最大数量是6个,而某些集群表明,商品的及时交付在客户反馈和高销售额中起着至关重要的作用。独创性/价值这是一项罕见的研究,通过利用基于数字化转型的方法来开发卖家细分策略,以实现卖家群体划分。
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来源期刊
CiteScore
14.80
自引率
6.20%
发文量
30
期刊介绍: The Journal of Enterprise Information Management (JEIM) is a significant contributor to the normative literature, offering both conceptual and practical insights supported by innovative discoveries that enrich the existing body of knowledge. Within its pages, JEIM presents research findings sourced from globally renowned experts. These contributions encompass scholarly examinations of cutting-edge theories and practices originating from leading research institutions. Additionally, the journal features inputs from senior business executives and consultants, who share their insights gleaned from specific enterprise case studies. Through these reports, readers benefit from a comparative analysis of different environmental contexts, facilitating valuable learning experiences. JEIM's distinctive blend of theoretical analysis and practical application fosters comprehensive discussions on commercial discoveries. This approach enhances the audience's comprehension of contemporary, applied, and rigorous information management practices, which extend across entire enterprises and their intricate supply chains.
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