An automatic shape independent clustering technique

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摘要

This article describes a clustering technique that can automatically detect any number of well-separated clusters which may be of any shape, convex and/or non-convex. This is in contrast to most other techniques which assume a value for the number of clusters and/or a particular cluster structure. The proposed technique is based on an iterative partitioning of the relative neighborhood graph, coupled with a post-processing step for merging small clusters. Techniques for improving the efficiency of the proposed scheme are implemented. The clustering scheme is able to detect outliers in data. It is also able to indicate the inherent hierarchical nature of the clusters present in a data set. Moreover, the proposed technique is also able to identify the situation when the data do not have any natural clusters at all. Results demonstrating the effectiveness of the clustering scheme are provided for several data sets.

论文关键词:Graph partitioning,Hierarchical clusters,Non-convex clusters,Relative neighborhood,Unsupervised pattern classification,Variable number of clusters

论文评审过程:Received 9 May 2002, Revised 23 January 2003, Accepted 19 May 2003, Available online 29 August 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(03)00235-8