Detection of communities in dynamic social networks

S. Krishnan, S. Karthika, S. Bose
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引用次数: 3

Abstract

In the social world the sharing of knowledge, data's and concepts within a group is done through the network of interactions and relationships. A community is formed by a group of individuals of same interest to share common values within themselves at a higher rate than outside the community. It can be a social unit of any size. The significant chore while studying the social network is to identify the communities. Communities facilitate to determine the cluster of intermingling objects denoted as nodes and the relations within themselves. In this paper, we propose a integrated framework for community detection in social networks. To find the communities in a social network our proposed framework follows a density based approach. We implement our proposed approach for different real-time dataset and got better results. Thus the proposed framework efficiently detects the communities exist in the social network.
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动态社会网络中的社区检测
在社会世界中,知识、数据和概念在群体中的共享是通过互动和关系网络完成的。一个社区是由一群有相同兴趣的人组成的,他们在自己内部分享共同的价值观,比在社区外分享的频率更高。它可以是任何大小的社会单位。在研究社交网络时,最重要的任务是识别社区。社区有助于确定表示为节点的混合对象集群和它们内部的关系。在本文中,我们提出了一个集成的社区检测框架在社交网络。为了在社交网络中找到社区,我们提出的框架遵循基于密度的方法。在不同的实时数据集上实现了该方法,取得了较好的效果。因此,该框架能够有效地检测出社会网络中存在的社区。
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