基于群体智能算法的社交网络流失率计算

H. Sotoodeh, E. Daei, F. Safaei, Pejman Mohammadi
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引用次数: 1

摘要

今天,在许多应用中,流失现象被认为是一个重要的结果。社交网络可以被认为是具有上述结果的最重要的应用之一。社交网络的流失取决于用户在交流环境中的活动,如果这种活动低于要求的程度就会出现。群体智能算法(SI)被认为是对社交网络中的通信进行建模的合适工具。这类算法根据局部智能体的行为,试图得到全局行为。本文旨在通过上述方法来衡量用户的流失率,并将用户在网络中传递的通信信息纳入其中。考虑到测量的活动率,将得到各个通信领域的流失阈值。仿真结果证实了所提出的通信模型。模型验证和其他值由离散事件模拟器获得。在这个模拟中使用的通信来自于挖掘一个数据集,其中包括上述网络中的一种的真实通信。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Churn calculation based on Swarm Intelligence algorithms in social networks
Today, the churn phenomenon has been considered in many applications as an important outcome. Social networks can be considered as one of the most important applications with the mentioned outcome. Churn in social networks depends on the users' activity in a communication environment and appears if this activity is less than a required extent. Swarm Intelligence algorithms(SI), assumed to be the proper tools to model the communications in a social network. This bunch of algorithms according to the local agents' behavior, try to result the global behavior. This paper aims to measuring the user's churn by the mentioned method and including the communication messages transferred by the users in the network. Considering the measured activity rate, a churn threshold in various areas of communication will be obtained. Simulation results referring to confirmed the presented model of communication. The model validation and other values are obtained by a discrete event simulator. The communications used in this simulation result from mining a data set including real communications for one species of the mentioned networks.
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