非均匀网格上的山聚类

J. T. Rickard, R. Yager, W. Miller
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引用次数: 5

摘要

我们描述了对Yager和Filev最初提出的山法(MM)聚类的改进。新技术采用数据驱动的分层划分,使用“p树”算法对数据集进行聚类。p-tree终端节点的数据子集的质心是应用MM迭代候选聚类中心选择过程的候选聚类中心集合。随着原始MM中使用的数据维度和/或均匀网格线数量的增加,我们的方法需要MM选择算法评估的聚类中心呈指数级减少。示例数据集说明了这种新技术的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mountain clustering on nonuniform grids
We describe an improvement on the mountain method (MM) of clustering originally proposed by Yager and Filev. The new technique employs a data-driven, hierarchical partitioning of the data set to be clustered, using a "p-tree" algorithm. The centroids of data subsets in the terminal nodes of the p-tree are the set of candidate cluster centers to which the iterative candidate cluster center selection process of MM is applied. As the data dimension and/or the number of uniform grid lines used in the original MM increases, our approach requires exponentially fewer cluster centers to be evaluated by the MM selection algorithm. Sample data sets illustrate the performance of this new technique.
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