A Review on Various Community Detection Methods in Massive Networks Using Graph Mining

Ami Charadava, K. Sutaria, Nivid Limbasiya
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Abstract

Nowadays, massive social networks like Facebook, Twitter, LinkedIn, Google+ has gained remarkable attention of Peoples and these massive networks have a tremendous amount of multifarious data which analysis can lead to identifying unknown information and relations among such networks. Social network analysis (SNA) is a difficult task in a recent situation. The peoples are more attached to these social networks sites cause them to produced massive data. So this massive network's data are very much complex to analyze manually. Community detection in sizably voluminous-scale gregarious networks becomes more consequential. A community is a subset of nodes in networks so that nodes in the same community are more densely connected than nodes in a various community. An unfolding of communities is important to understand the structure of massive networks. Data mining provides many techniques and algorithms to unfold communities among these massive networks. A community can be represented using graph so Community has different parameters like modularity, conductance, density etc. and by improving one of these parameters we can detect better community. So to detect community is a challenging task in the recent scenario. This paper represents a review of existing community detection algorithms and approaches in massive networks.
基于图挖掘的海量网络社区检测方法综述
如今,Facebook, Twitter, LinkedIn, Google+等庞大的社交网络已经引起了人们的极大关注,这些庞大的网络拥有大量的各种数据,通过分析可以识别这些网络之间的未知信息和关系。社会网络分析(SNA)是一项艰巨的任务。人们对这些社交网站的依赖程度越来越高,导致它们产生了大量的数据。因此,这个庞大的网络数据的人工分析是非常复杂的。在相当大的群体网络中,社区检测变得更加重要。社区是网络中节点的子集,因此同一社区中的节点比不同社区中的节点连接得更紧密。社区的展开对于理解大规模网络的结构非常重要。数据挖掘提供了许多技术和算法来揭示这些庞大网络中的社区。社区可以用图形来表示,因此社区有不同的参数,如模块化、电导、密度等,通过改进这些参数中的一个,我们可以检测出更好的社区。因此,在最近的情况下,检测社区是一项具有挑战性的任务。本文对大规模网络中现有的社区检测算法和方法进行了综述。
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