كليدواژه :
Community detection , frequent pattern mining , algorithm , Online social network , Identify leader
چكيده فارسي :
recently, the online social networks provide
a rich resource of Heterogeneous data which its analysis can
lead to discover unknown information and relations within
such networks. In analysis of social networks data, a
challenging issue is the discovery of community including
“similar” nodes and it has widely been studied in the social
networking community in the context of the structure of the
underlying graphs. The online social networks, additionally
having graph structures, include effective information of
users within networks, which using this information can lead
to improve the quality of communitiesʹ discovery. In this
paper, instead of using centrality measures in social
networks analysis, to discover leaders and similar nodes,
user actions are used and by using these leaders,
communities are identified. First, based on Interests and
activities of users in networks, we discover some small
communities of similar users, and then by using social
relations, extend (those) communities. Finally, by conducting
doing empirical studies, the efficiency of our approach on
community discovery within the online social networks will
be demonstrated