Chouaten Karim, Rodriguez Rivero Cristian, Nack Frank, Reckers Max
Faculty of Science, University of Amsterdam, Amsterdam, Netherlands.
AFC Ajax N.V, Amsterdam, Netherlands.
Front Sports Act Living. 2024 Aug 22;6:1362489. doi: 10.3389/fspor.2024.1362489. eCollection 2024.
In the modern competitive landscape of football, clubs are increasingly leveraging data-driven decision-making to strengthen their commercial positions, particularly against rival clubs. The strategic allocation of resources to attract and retain profitable fans who exhibit long-term loyalty is crucial for advancing a club's marketing efforts. While the Recency, Frequency, and Monetary (RFM) customer segmentation technique has seen widespread application in various industries for predicting customer behavior, its adoption within the football industry remains underexplored. This study aims to address this gap by introducing an adjusted RFM approach, enhanced with the Analytic Hierarchy Process (AHP) and unsupervised machine learning, to effectively segment football fans based on Customer Lifetime Value (CLV).
This research employs a novel weighted RFM method where the significance of each RFM component is quantified using the AHP method. The study utilizes a dataset comprising 500,591 anonymized merchandising transactions from Amsterdamsche Football Club Ajax (AFC Ajax). The derived weights for the RFM variables are 0.409 for Monetary, 0.343 for Frequency, and 0.248 for Recency. These weights are then integrated into a clustering framework using unsupervised machine learning algorithms to segment fans based on their weighted RFM values. The simple weighted sum approach is subsequently applied to estimate the CLV ranking for each fan, enabling the identification of distinct fan segments.
The analysis reveals eight distinct fan clusters, each characterized by unique behaviors and value contributions: The Golden Fans (clusters 1 and 2) exhibit the most favourable scores across the recency, frequency, and monetary metrics, making them relatively the most valuable. They are critical to the club's profitability and should be rewarded through loyalty programs and exclusive services. The Promising segment (cluster 3) shows potential to ascend to Golden Fan status with increased spending. Targeted marketing campaigns and incentives can stimulate this transition. The Needs Attention segment (cluster 4) are formerly loyal fans whose engagement has diminished. Re-engagement strategies are vital to prevent further churn. The New Fans segment (clusters 5 and 6) are fans who have recently transacted and show potential for growth with proper engagement and personalized offerings. Lastly, the Churned/Low Value segment (clusters 7 and 8) are fans who relatively contribute the least and may require price incentives to potentially re-engage, though they hold relatively lower priority compared to other segments.
The findings validate the proposed method's utility through its application to AFC Ajax's Customer Relationship Management (CRM) data and provides a robust framework for fan segmentation in the football industry. The approach offers actionable insights that can significantly enhance marketing strategies by identifying and prioritizing high-value segments based on the club's preferences and requirements. By maintaining the loyalty of Golden Fans and nurturing the Promising segment, football clubs can achieve substantial gains in profitability and fan engagement. Additionally, the study underscores the necessity of re-engaging formerly loyal fans and fostering new fans' growth to enable long-term commercial success. This methodology not only aims to bridge a research gap, but also equips marketing practitioners with data-driven tools for effective and efficient customer segmentation in the football industry.
在现代足球竞争格局中,俱乐部越来越多地利用数据驱动的决策来强化其商业地位,尤其是相对于竞争对手。战略性地分配资源以吸引和留住表现出长期忠诚度的盈利球迷,对于推进俱乐部的营销工作至关重要。虽然最近一次购买时间(Recency)、购买频率(Frequency)和购买金额(Monetary)(RFM)客户细分技术在各行业广泛应用于预测客户行为,但其在足球行业的应用仍未得到充分探索。本研究旨在通过引入一种经调整的RFM方法来填补这一空白,该方法通过层次分析法(AHP)和无监督机器学习进行增强,以基于客户终身价值(CLV)有效地对足球球迷进行细分。
本研究采用一种新颖的加权RFM方法,其中每个RFM组件的重要性通过AHP方法进行量化。该研究使用了一个数据集,该数据集包含来自阿姆斯特丹阿贾克斯足球俱乐部(AFC Ajax)的500,591笔匿名商品交易。RFM变量的导出权重分别为:购买金额0.409、购买频率0.343、最近一次购买时间0.248。然后,这些权重被整合到一个聚类框架中,使用无监督机器学习算法根据球迷的加权RFM值对其进行细分。随后应用简单加权求和方法来估计每个球迷的CLV排名,从而能够识别不同的球迷细分群体。
分析揭示了八个不同的球迷群体,每个群体都有独特的行为和价值贡献:黄金球迷(第1和第2组)在最近一次购买时间、购买频率和购买金额指标上表现出最有利的分数,使其相对而言最具价值。他们对俱乐部的盈利能力至关重要,应通过忠诚度计划和专属服务给予奖励。有潜力的群体(第3组)随着支出增加有提升至黄金球迷地位的潜力。有针对性的营销活动和激励措施可以刺激这种转变。需要关注的群体(第4组)是以前忠诚的球迷,但其参与度有所下降。重新吸引策略对于防止进一步流失至关重要。新球迷群体(第5和第6组)是最近进行交易的球迷,通过适当的参与和个性化服务显示出增长潜力。最后,流失/低价值群体(第7和第8组)是相对贡献最少的球迷,可能需要价格激励措施来潜在地重新吸引他们,不过与其他群体相比,他们的优先级相对较低。
研究结果通过将所提出的方法应用于AFC Ajax的客户关系管理(CRM)数据验证了其效用,并为足球行业的球迷细分提供了一个强大的框架。该方法提供了可操作的见解,通过根据俱乐部的偏好和要求识别高价值细分群体并对其进行优先级排序,可显著增强营销策略。通过保持黄金球迷的忠诚度并培育有潜力的群体,足球俱乐部可以在盈利能力和球迷参与度方面取得重大收益。此外,该研究强调了重新吸引以前忠诚的球迷并促进新球迷增长以实现长期商业成功的必要性。这种方法不仅旨在填补研究空白,还为营销从业者提供了数据驱动的工具,以便在足球行业进行有效且高效的客户细分。