Enhanced neural gas network for prototype-based clustering

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摘要

In practical cluster analysis tasks, an efficient clustering algorithm should be less sensitive to parameter configurations and tolerate the existence of outliers. Based on the neural gas (NG) network framework, we propose an efficient prototype-based clustering (PBC) algorithm called enhanced neural gas (ENG) network. Several problems associated with the traditional PBC algorithms and original NG algorithm such as sensitivity to initialization, sensitivity to input sequence ordering and the adverse influence from outliers can be effectively tackled in our new scheme. In addition, our new algorithm can establish the topology relationships among the prototypes and all topology-wise badly located prototypes can be relocated to represent more meaningful regions. Experimental results1on synthetic and UCI datasets show that our algorithm possesses superior performance in comparison to several PBC algorithms and their improved variants, such as hard c-means, fuzzy c-means, NG, fuzzy possibilistic c-means, credibilistic fuzzy c-means, hard/fuzzy robust clustering and alternative hard/fuzzy c-means, in static data clustering tasks with a fixed number of prototypes.

论文关键词:Prototype-based clustering,c-means,Neural gas,Outliers,Minimum description length (MDL),Topology formation,Relocation,Survey

论文评审过程:Received 15 June 2004, Revised 13 October 2004, Accepted 7 December 2004, Available online 10 March 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2004.12.007