以社会为中心和以自我为中心的电信社交网络关键参与者识别方法

Pushpa, G. Shobha
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摘要

电信社交网络分析(TSNA)是电信行业关注的一个新兴领域,因为它不仅有助于探索有关用户社交网络的信息,而且有助于运营商专注于他们的业务分析。TSNA被用来解决一些电信问题,如提高客户流失预测、整体客户满意度和留存率。因为社会网络的结构提供了一种自然的方式来理解客户关系和高度联系的客户群体的行为。社会网络分析的典型工作包括构建多关系电信社会网络和电信客户自我网络,以发现具有相似属性的客户群体,并将客户划分为流失客户和非流失客户。本文探讨了以社会为中心和以自我为中心的方法,以确定在电信社交网络流失率的决策中起重要作用的关键参与者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sociocentric and egocentric measures for identifying the key players in telecom social network
Telecom Social Network Analysis (TSNA) is an upcoming and interesting area of concern in telecom industries since it not only helps in exploring the information regarding the social network of subscribers but also helps the operators' to focus on their business analytics. TSNA is being used to give a solution to some of the telecom problems such as to improve churn prediction, overall customer satisfaction and retention. Since the structure of social networks provides the natural way to understand customers' relationships and the behavior of groups of highly connected customers. The typical work on social network analysis includes the construction of both multirelational telecom social networks and ego-networks of telecom customers for discovery of group of customers who share similar properties and classify the customers as churners and non-churners. This paper explores both sociocentric and egocentric methods for identifying key players who plays important roles in decision making in finding the churn rate of telecom social networks.
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