Personalized Advertising in E-Commerce: Using Clickstream Data to Target High-Value Customers

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Algorithms Pub Date : 2024-01-10 DOI:10.3390/a17010027
V. Sakalauskas, D. Kriksciuniene
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Abstract

The growing popularity of e-commerce has prompted researchers to take a greater interest in deeper understanding online shopping behavior, consumer interest patterns, and the effectiveness of advertising campaigns. This paper presents a fresh approach for targeting high-value e-shop clients by utilizing clickstream data. We propose the new algorithm to measure customer engagement and recognizing high-value customers. Clickstream data is employed in the algorithm to compute a Customer Merit (CM) index that measures the customer’s level of engagement and anticipates their purchase intent. The CM index is evaluated dynamically by the algorithm, examining the customer’s activity level, efficiency in selecting items, and time spent in browsing. It combines tracking customers browsing and purchasing behaviors with other relevant factors: time spent on the website and frequency of visits to e-shops. This strategy proves highly beneficial for e-commerce enterprises, enabling them to pinpoint potential buyers and design targeted advertising campaigns exclusively for high-value customers of e-shops. It allows not only boosts e-shop sales but also minimizes advertising expenses effectively. The proposed method was tested on actual clickstream data from two e-commerce websites and showed that the personalized advertising campaign outperformed the non-personalized campaign in terms of click-through and conversion rate. In general, the findings suggest, that personalized advertising scenarios can be a useful tool for boosting e-commerce sales and reduce advertising cost. By utilizing clickstream data and adopting a targeted approach, e-commerce businesses can attract and retain high-value customers, leading to higher revenue and profitability.
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电子商务中的个性化广告:利用点击流数据锁定高价值客户
电子商务的日益普及促使研究人员对深入了解在线购物行为、消费者兴趣模式和广告活动的有效性产生了更大的兴趣。本文提出了一种利用点击流数据锁定高价值电子商店客户的新方法。我们提出了衡量客户参与度和识别高价值客户的新算法。该算法利用点击流数据计算客户价值(CM)指数,以衡量客户的参与度并预测其购买意向。CM 指数由算法动态评估,检查客户的活动水平、选择项目的效率以及浏览所花费的时间。它将跟踪客户的浏览和购买行为与其他相关因素相结合:在网站上花费的时间和访问电子商店的频率。事实证明,这一策略对电子商务企业非常有利,使其能够准确定位潜在买家,并专门针对电子商店的高价值客户设计有针对性的广告活动。它不仅能提高电子商店的销售额,还能有效降低广告费用。我们用两个电子商务网站的实际点击流数据对所提出的方法进行了测试,结果表明,在点击率和转换率方面,个性化广告活动优于非个性化广告活动。总体而言,研究结果表明,个性化广告方案是促进电子商务销售和降低广告成本的有效工具。通过利用点击流数据和采用有针对性的方法,电子商务企业可以吸引和留住高价值客户,从而提高收入和利润率。
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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