通过动作规则挖掘改善B2B客户流失

IF 7.5 1区 管理学 Q1 BUSINESS
Emil Guliyev, Juliana Sanchez Ramirez, Arno De Caigny, Kristof Coussement
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引用次数: 0

摘要

企业对企业(B2B)公司必须保持强大的客户基础,以确保经常性收入。为了有效地做到这一点,他们应该进行流失预测。主动识别潜在的流失客户并采取积极的保留措施,有助于公司维护其收入流,并与客户建立牢固、持久的关系,从而提高公司在动态、竞争激烈的市场中的可持续性和竞争力。然而,现有的B2B客户流失模型往往不能提供真正实用或可操作的决策支持,因此营销人员必须依靠他们的直觉,并付出额外的努力来定义适当的预防性保留措施。为了解决研究模型和可操作见解之间的研究差距,目前的研究提出了B2B-ARM,一种B2B可操作规则模型(ARM),它为主动保留管理提供了明确的行动路径。对一家拥有6275份合同的欧洲B2B软件公司的现实案例研究提供了基准证据,证明B2B- arm可以像流行的现有预测模型(即决策树、逻辑回归和naïve贝叶斯)一样很好地检测客户流失。此外,B2B-ARM提供了可操作的建议,以及防止流失的直接补救措施,这样营销人员就可以节省时间和资源。总的来说,B2B- arm是一个可靠、高效、实用的工具,可以减少B2B客户流失,提高客户留存率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving B2B customer churn through action rule mining
Business-to-business (B2B) firms must maintain robust customer bases to ensure recurring revenue. To do so effectively, they should engage in churn prediction. Proactively identifying potential churners and taking proactive retention measures help companies safeguard their revenue streams and build strong, long-lasting relationships with customers, which enhances their sustainability and competitive performance in dynamic, competitive markets. Yet, extant B2B customer churn models often fail to offer truly practical or actionable decision support, such that marketers must rely on their intuition and exert additional effort to define appropriate preventive retention measures. To address this research gap between research models and actionable insights, the current study proposes B2B-ARM, a B2B actionable rule model (ARM), that offers clear action paths for proactive retention management. A real-life case study of a European B2B software company with 6275 contracts provides benchmark evidence that B2B-ARM can detect churn equally well as popular existing prediction models (i.e., decision tree, logistic regression, and naïve Bayes). Furthermore, B2B-ARM provides actionable recommendations, as well as direct remedies to prevent churn, such that marketers save both time and resources. Overall, B2B-ARM is a reliable, efficient, and practical tool for mitigating B2B churn and improving customer retention.
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来源期刊
CiteScore
17.30
自引率
20.40%
发文量
255
期刊介绍: Industrial Marketing Management delivers theoretical, empirical, and case-based research tailored to the requirements of marketing scholars and practitioners engaged in industrial and business-to-business markets. With an editorial review board comprising prominent international scholars and practitioners, the journal ensures a harmonious blend of theory and practical applications in all articles. Scholars from North America, Europe, Australia/New Zealand, Asia, and various global regions contribute the latest findings to enhance the effectiveness and efficiency of industrial markets. This holistic approach keeps readers informed with the most timely data and contemporary insights essential for informed marketing decisions and strategies in global industrial and business-to-business markets.
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