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  A New Density-Based Scheme for Clustering Based on Genetic Algorithm
 
 
Title: A New Density-Based Scheme for Clustering Based on Genetic Algorithm
Author: Chih-Yang Lin
Chin-Chen Chang
Chia-Chen Lin
Appeared in: Fundamenta informaticae
Paging: Volume 68 (2005) nr. 4 pages 315-331
Year: 2005-09-16
Contents: Density-based clustering can identify arbitrary data shapes and noises. Achieving good clustering performance necessitates regulating the appropriate parameters in the density-based clustering. To select suitable parameters successfully, this study proposes an interactive idea called GADAC to choose suitable parameters and accept the diverse radii for clustering. Adopting the diverse radii is the original idea employed to the density-based clustering, where the radii can be adjusted by the genetic algorithmto cover the clusters more accurately. Experimental results demonstrate that the noise and all clusters in any data shapes can be identified precisely in the proposed scheme. Additionally, the shape covering in the proposed scheme is more accurate than that in DBSCAN.
Publisher: IOS Press
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

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