Actas de congresos
A Naïve Bayes model based on overlapping groups for link prediction in online social networks
Fecha
2015-04Registro en:
Symposium on Applied Computing, 30th, 2015, Salamanca.
9781450331968
Autor
Valverde-Rebaza, Jorge Carlos
Valejo, Alan Demetrius Baria
Berton, Lilian
Faleiros, Thiago de Paulo
Lopes, Alneu de Andrade
Institución
Resumen
Link prediction in online social networks is useful in numerous applications, mainly for recommendation. Recently, different approaches have considered friendship groups information for increasing the link prediction accuracy. Nevertheless, these approaches do not consider the different roles that common neighbors may play in the different overlapping groups that they belong to. In this paper, we propose a new approach that uses overlapping groups structural information for building a naïve Bayes model. From this proposal, we show three different measures derived from the common neighbors. We perform experiments for both unsupervised and supervised link prediction strategies considering the link imbalance problem. We compare sixteen measures in four well-known online social networks: Flickr, LiveJournal, Orkut and Youtube. Results show that our proposals help to improve the link prediction accuracy.