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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >REAL-TIME AND AUTOMATIC TWO-CLASS CLUSTERING BY ANALYTICAL FORMULAS
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REAL-TIME AND AUTOMATIC TWO-CLASS CLUSTERING BY ANALYTICAL FORMULAS

机译:实时和自动两类聚类分析公式

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摘要

Several feature-preserving two-class clustering methods are investigated in this paper. By preserving certain features of the input data, some formulas useful in calculating the two class representatives and population percentages are derived. The derived formulas are expressed in general forms suitable for any dimensionality higher than two. The complexities of the investigated methods are all of order N if the data size is N and hence are much faster than any other clustering method which uses N x N dissimilarity matrix. Additionally, all investigated methods use no initial guesses. Experimental results are included to make a comparison among the four investigated methods so that only two methods are recommended. Further comparisons with the k-means method and hierarchical clustering methods also are included. The proposed feature-preserving approach was found to be fast, automatic and suitable for any held requiring fast high-dimensional two-class clustering. Copyright (C) 1996 Pattern Recognition Society. [References: 13]
机译:本文研究了几种保留特征的两类聚类方法。通过保留输入数据的某些特征,得出了一些可用于计算两个类别代表和人口百分比的公式。导出的公式以适用于任何大于2维的一般形式表示。如果数据大小为N,则研究方法的复杂度全部为N阶,因此比使用N x N不相似矩阵的任何其他聚类方法要快得多。此外,所有调查的方法均不使用初始猜测。包括实验结果以比较四种研究方法,因此仅推荐两种方法。还包括与k-means方法和层次聚类方法的进一步比较。发现所提出的特征保留方法是快速,自动的,并且适合于需要快速高维两类聚类的任何保持。版权所有(C)1996模式识别学会。 [参考:13]

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