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A NONPARAMETRIC VALLEY-SEEKING TECHNIQUE FOR CLUSTER ANALYSIS

机译:寻求聚类分析的非参数谷寻求技术

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The problem of clustering multivariate observations is viewed as the replacement of a set of vectors with a set of labels and representative vectors. A general criterion for clustering is derived as a measure of representation error. Some special cases are derived by simplifying the general criterion. A general algorithm for finding the optimum classification with respect to a given criterion is derived. For a particular case, the algorithm reduces to a repeated application of a straightforward decision rule which behaves as a valley-seeking technique. Asymptotic properties of the procedure are developed. Numerical examples are presented for the finite sample case.
机译:聚类多变量观测的问题被视为用一组标签和代表向量替换一组矢量。群集的一般标准派生为表示错误的量度。通过简化一般标准来得出一些特殊情况。派生用于找到相对于给定标准的最佳分类的一般算法。对于特定情况,该算法减少了反复应用直接决策规则,其表现为寻求谷类技术。开发了该程序的渐近性质。提出了用于有限样品壳体的数值例子。

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