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Group CRM

机译:集团客户关系管理

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摘要

The structure of customer communication network provides us a natural way to understand customers' relationships. Traditional customer relationship management (CRM) methods focus on various customer profitability models, and they are short of ways to understand the social interactions. Graph mining and social network analysis provide ways to understand the relationships between customers, and there are already a few applications in CRM using these methods. To transform the traditional CRM methods from individuals to social groups, we propose a novel technical framework (GCRM) to manage the social groups in massive telecom call graphs. Our framework is based on a series of newly emerged methods for social network analysis, such as group detecting, group evolution tracking and group life-cycle modeling in telecom applications. We analyze the relationships between social groups and propose a method to find potential customers in these groups. To evaluate GCRM, we present a comprehensive study to explore the group evolutions in real-world massive telecom call graphs. Empirical results show that by taking this framework, analysts can gain deeper insights into the communication patterns of social groups and their evolutionary patterns which makes the management of these social groups much easier in real-world telecom applications.
机译:客户沟通网络的结构为我们提供了一种了解客户关系的自然方式。传统的客户关系管理(CRM)方法专注于各种客户获利能力模型,并且缺乏理解社交互动的方法。图挖掘和社交网络分析提供了了解客户之间关系的方法,并且使用这些方法的CRM中已经有一些应用程序。为了将传统的CRM方法从个人转变为社会群体,我们提出了一种新颖的技术框架(GCRM),用于在大量电信呼叫图中管理社会群体。我们的框架基于一系列用于社交网络分析的新兴方法,例如电信应用中的组检测,组演化跟踪和组生命周期建模。我们分析了社会群体之间的关系,并提出了一种在这些群体中寻找潜在客户的方法。为了评估GCRM,我们提供了一项全面的研究,以探索现实世界中大规模电信呼叫图中的组演化。实证结果表明,通过采用此框架,分析人员可以更深入地了解社会群体的交流模式及其演化模式,从而使这些社会群体的管理在现实的电信应用中更加容易。

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