改善市场绩效指标的消费者行为分析框架:沙特零售业案例研究

IF 5.1 3区 管理学 Q1 BUSINESS Journal of Theoretical and Applied Electronic Commerce Research Pub Date : 2024-01-17 DOI:10.3390/jtaer19010009
Monerah Alawadh, Ahmed Barnawi
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引用次数: 0

摘要

研究客户行为和预测未来趋势是一项极具挑战性的任务,因为客户行为非常复杂且不断变化。为了有效预测未来趋势,企业需要分析大量数据,使用复杂的分析技术,并紧跟最新研究和行业趋势。在本文中,我们提出了一个综合框架,利用多层处理(包括聚类、分类和关联规则学习)来识别消费者行为的趋势。目的是利用大数据分析的力量,帮助沙特阿拉伯的一家大型零售商更好地了解顾客行为。所提出的框架具有通用性,可以深入了解所生成的大数据,并在其他相关领域实现数据驱动决策。我们与沙特阿拉伯的一家大型连锁超市合作开发了这一框架,该超市为我们提供了超过 100 万条销售交易记录,这些记录属于其约 3 万名忠实客户。在本研究中,我们将我们提出的框架作为案例应用于这些数据,并展示了消费者聚类和每个聚类的关联规则的初步结果。此外,我们还将对研究结果进行分析,以找出如何进一步利用智能来预测聚类群体中的客户行为。
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A Consumer Behavior Analysis Framework toward Improving Market Performance Indicators: Saudi’s Retail Sector as a Case Study
Studying customer behavior and anticipating future trends is a challenging task, as customer behavior is complex and constantly evolving. To effectively anticipate future trends, businesses need to analyze large amounts of data, use sophisticated analytical techniques, and stay up-to-date with the latest research and industry trends. In this paper, we propose a comprehensive framework to identify trends in consumer behavior using multiple layers of processing, including clustering, classification, and association rule learning. The aim is to help a major retailer in Saudi Arabia better understand customer behavior by utilizing the power of big data analysis. The proposed framework is presented as being generalized to gain insight into the generated big data and enable data-driven decision-making in other relevant domains. We developed this framework in collaboration with a large supermarket chain in Saudi Arabia, which provided us with over 1,000,000 sales transaction records belonging to around 30,000 of their loyal customers. In this study, we apply our proposed framework to those data as a case study and present our initial results of consumer clustering and association rules for each cluster. Moreover, we analyze our findings to figure out how we can further utilize intelligence to predict customer behavior in clustered groups.
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来源期刊
CiteScore
9.50
自引率
3.60%
发文量
67
期刊介绍: The Journal of Theoretical and Applied Electronic Commerce Research (JTAER) has been created to allow researchers, academicians and other professionals an agile and flexible channel of communication in which to share and debate new ideas and emerging technologies concerned with this rapidly evolving field. Business practices, social, cultural and legal concerns, personal privacy and security, communications technologies, mobile connectivity are among the important elements of electronic commerce and are becoming ever more relevant in everyday life. JTAER will assist in extending and improving the use of electronic commerce for the benefit of our society.
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