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计算机应用研究 2011
Suborbicular cluster recognition algorithm based on multi-dimensional analysis
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Abstract:
In order to explore the real features of outcome clusters, this paper proposed a suborbicular cluster recognition algorithm based on multi-dimensional analysis. Firstly, it analyzed the given data sets in each dimension, then drew the frequency cure of every dimension and compared the characteristics of those cures. Finally, it identified the suborbicular cluster from a number of clusters. A large number of experiments show that the algorithm is robust, effective. It can be extended to high-dimensional data sets.