Community Detection is a fundamental task in the field of Social Network Analysis, extensively studied in literature. Recently, some approaches have been proposed to detect communities distinguishing their members between kernel that represents opinion leaders, and auxiliary who are not leaders but are linked to them. However, these approaches suffer from two important limitations: first, they cannot identify overlapping communities, which are often found in social networks (users are likely to belong to multiple groups simultaneously); second, they cannot deal with node attributes, which can provide important information related to community affiliation. In this paper we propose a method to improve a well-known kernel-based approach named Greedy-WeBA (Wang et al., 2011) and overcome these limitations. We perform a comparative analysis on three social network datasets, Wikipedia, Twitter and Facebook, showing that modeling overlapping communities and considering node attributes strongly improves the ability of detecting real social network communities.

Maccagnola, D., Fersini, E., Djennadi, R., Messina, V. (2015). Overlapping Kernel-based community detection with node attributes. In Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - IC3K 2015 (pp.517-524). SciTePress [10.5220/0005640205170524].

Overlapping Kernel-based community detection with node attributes

MACCAGNOLA, DANIELE
Primo
;
FERSINI, ELISABETTA
Secondo
;
MESSINA, VINCENZINA
Ultimo
2015

Abstract

Community Detection is a fundamental task in the field of Social Network Analysis, extensively studied in literature. Recently, some approaches have been proposed to detect communities distinguishing their members between kernel that represents opinion leaders, and auxiliary who are not leaders but are linked to them. However, these approaches suffer from two important limitations: first, they cannot identify overlapping communities, which are often found in social networks (users are likely to belong to multiple groups simultaneously); second, they cannot deal with node attributes, which can provide important information related to community affiliation. In this paper we propose a method to improve a well-known kernel-based approach named Greedy-WeBA (Wang et al., 2011) and overcome these limitations. We perform a comparative analysis on three social network datasets, Wikipedia, Twitter and Facebook, showing that modeling overlapping communities and considering node attributes strongly improves the ability of detecting real social network communities.
paper
Community detection; Kernel communities; Social network analysis; Software
English
International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management, IC3K - 12-14 november
2015
Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - IC3K 2015
9789897581588
2015
1
517
524
none
Maccagnola, D., Fersini, E., Djennadi, R., Messina, V. (2015). Overlapping Kernel-based community detection with node attributes. In Proceedings of the 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management - IC3K 2015 (pp.517-524). SciTePress [10.5220/0005640205170524].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/135764
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