Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/2393
Title: COMMUNITY DETECTION BASED ON GIRVAN NEWMAN ALGORITHM AND LINK ANALYSIS OF SOCIAL MEDIA
Other Titles: Annual Convention of the Computer Society of India CSI 2016: Digital Connectivity – Social Impact . Springer Nature Singapore Pte Ltd
Authors: Sathiyakumari K
Vijaya M S
Keywords: Edge-Betweenness Modularity Degree Closeness Community detection Social network
Issue Date: Nov-2016
Publisher: P S G R Krishnammal College for Women
Abstract: Social networks have acquired much attention recently, largely due to the success of online social networking sites and media sharing sites. In such networks, rigorous and complex interactions occur among numerous one-of-a-kind entities, main to massive statistics networks with notable enterprise capacity. Community detection is an unsupervised learning task that determines the community groups based on common interests, occupation, modules and their hierarchical organization, using the information encoded in the graph topology. Finding communities from the social network is a difficult task because of its topology and overlapping of different communities. In this research, the Girvan-Newman algorithm based on Edge-Betweenness Modularity and Link Analysis (EBMLA) is used for detecting communities in networks with node attributes. The twitter data of the well-known cricket player is used right here and community of friends and fans is analyzed based on three exclusive centrality measures together with a degree, betweenness, and closeness centrality. Also, the strength of extracted communities is evaluated based on modularity score using proposed method and the experiment results confirmed that the cricket player’s network is dense.
URI: http://localhost:8080/xmlui/handle/123456789/2393
ISBN: 978-981-10-3274-5
Appears in Collections:International Conference

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