Actas de congresos
Multilevel refinement based on neighborhood similarity
Fecha
2014-07Registro en:
International Database Engineering & Applications Symposium, 18th, 2014, Porto.
9781450326278
Autor
Valejo, Alan Demétrius Baria
Valverde-Rebaza, Jorge Carlos
Drury, Brett Mylo
Lopes, Alneu de Andrade
Institución
Resumen
The multilevel graph partitioning strategy aims to reduce the computational cost of the partitioning algorithm by applying it on a coarsened version of the original graph. This strategy is very useful when large-scale networks are analyzed. To improve the multilevel solution, refinement algorithms have been used in the uncorsening phase. Typical refinement algorithms exploit network properties, for example minimum cut or modularity, but they do not exploit features from domain specific networks. For instance, in social networks partitions with high clustering coefficient or similarity between vertices indicate a better solution. In this paper, we propose a refinement algorithm (RSim) which is based on neighborhood similarity. We compare RSim with: 1. two algorithms from the literature and 2. one baseline strategy, on twelve real networks. Results indicate that RSim is competitive with methods evaluated for general domains, but for social networks it surpasses the competing refinement algorithms.