Sciweavers

IDA
2011
Springer

PSO driven collaborative clustering: A clustering algorithm for ubiquitous environments

12 years 10 months ago
PSO driven collaborative clustering: A clustering algorithm for ubiquitous environments
Abstract. The goal of this article is to introduce a collaborative clustering approach to the domain of ubiquitous knowledge discovery. This clustering approach is suitable in peer-to-peer networks where different data sites want to cluster their local data as if they consolidated their data sets, but which is prevented by privacy restrictions. Two variants exist, i.e. one for data sites with the same observations but different features and one for data sites with the same features but different observations. The technique contains two parts, i.e. a collaborative fuzzy clustering technique and a particle swarm optimization to optimize the collaboration between data sites. Empirical analysis show how and when this PSO-CFC approach outperforms local fuzzy clustering. Key words: Ubiquitous Knowledge Discovery, Privacy Restrictions, Collaborative Clustering, Particle Swarm Optimization
Benoît Depaire, Rafael Falcón, Koen V
Added 28 May 2011
Updated 28 May 2011
Type Journal
Year 2011
Where IDA
Authors Benoît Depaire, Rafael Falcón, Koen Vanhoof, Geert Wets
Comments (0)