客户终身价值商业分析:概述分析

Onur Dogan, Abdulkadir Hiziroglu, Ali Pisirgen, Omer Faruk Seymen
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摘要

在以客户为导向的系统中,客户终身价值(CLV)对学术界和市场营销从业人员具有重要意义,尤其是在分析建模的范围内。客户终身价值是管理和组织公司盈利能力的重要方法。随着消费者数据的大量涌现,商业分析(BA)工具和方法以及 CLV 模型已被用于深入了解客户行为和决策过程。尽管 CLV 的重要性已得到公认,但在对应用于 CLV 的 BA 技术进行全面分析和评述方面却存在明显差距。本研究旨在填补这一空白,对结合了 BA 方法的 CLV 模型的最新研究进行全面调查,从而为该领域的研究议程做出贡献。综述方法包括三个主要步骤:确定相关研究、制定编码计划和确保编码可靠性。首先,使用预定义的关键词确定相关研究。其次,制定编码计划--这是本研究的重要贡献之一--以全面评估这些研究。最后,三位专家对编码计划的可靠性进行了测试,然后将其应用到选定的研究中。此外,还实施了编码计划中的具体评估标准,以引入新的见解。本研究从不同角度展示了令人兴奋和有价值的结果,为对 BA 和 CLV 的交集感兴趣的学术研究人员和营销从业人员提供了重要参考。
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Business Analytics in Customer Lifetime Value: An Overview Analysis
In customer‐oriented systems, customer lifetime value (CLV) has been of significant importance for academia and marketing practitioners, especially within the scope of analytical modeling. CLV is a critical approach to managing and organizing a company's profitability. With the vast availability of consumer data, business analytics (BA) tools and approaches, alongside CLV models, have been applied to gain deeper insights into customer behaviors and decision‐making processes. Despite the recognized importance of CLV, there is a noticeable gap in comprehensive analyses and reviews of BA techniques applied to CLV. This study aims to fill this gap by conducting a thorough survey of the state‐of‐the‐art investigations on CLV models integrated with BA approaches, thereby contributing to a research agenda in this field. The review methodology consists of three main steps: identification of relevant studies, creating a coding plan, and ensuring coding reliability. First, relevant studies were identified using predefined keywords. Next, a coding plan—one of the study's significant contributions—was developed to evaluate these studies comprehensively. Finally, the coding plan's reliability was tested by three experts before being applied to the selected studies. Additionally, specific evaluation criteria in the coding plan were implemented to introduce new insights. This study presents exciting and valuable results from various perspectives, providing a crucial reference for academic researchers and marketing practitioners interested in the intersection of BA and CLV.
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