2010
Autores
Jesus, Paulo; Baquero, Carlos; Almeida, PauloSergio;
Publicação
CoRR
Abstract
2012
Autores
Bieniusa, Annette; Zawirski, Marek; Preguiça, NunoM.; Shapiro, Marc; Baquero, Carlos; Balegas, Valter; Duarte, Sergio;
Publicação
CoRR
Abstract
2010
Autores
Preguiça, NunoM.; Baquero, Carlos; Almeida, PauloSergio; Fonte, Victor; Gonçalves, Ricardo;
Publicação
CoRR
Abstract
2011
Autores
Jin, D; Liu, DY; Yang, B; Baquero, C; He, DX;
Publicação
ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING, PT II: 15TH PACIFIC-ASIA CONFERENCE, PAKDD 2011
Abstract
Network clustering problem (NCP) is the problem associated to the detection of network community structures. Building on Markov random walks we address this problem with a new ant colony optimization strategy, named as ACOMRW, which improves prior results on the NCP problem and does not require knowledge of the number of communities present on a given network. The framework of ant colony optimization is taken as the basic framework in the ACOMRW algorithm. At each iteration, a Markov random walk model is taken as heuristic rule; all of the ants' local solutions are aggregated to a global one through clustering ensemble, which then will be used to update a pheromone matrix. The strategy relies on the progressive strengthening of within-community links and the weakening of between-community links. Gradually this converges to a solution where the underlying community structure of the complex network will become clearly visible. The performance of algorithm ACOMRW was tested on a set of benchmark computer-generated networks, and as well on real-world network data sets. Experimental results confirm the validity and improvements met by this approach.
2000
Autores
Almeida, PS; Baquero, C; Fonte, V;
Publicação
Proceedings of the ACM SIGOPS European Workshop, Kolding, Denmark, September 17-20, 2000
Abstract
2011
Autores
Shapiro, M; Preguiça, NM; Baquero, C; Zawirski, M;
Publicação
Bulletin of the EATCS
Abstract
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