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k-Medoids Substitution Clustering Method and a New Clustering Validity Index Method

机译:K-METOIDS替代聚类方法和新的聚类有效性索引方法

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It introduces a k-medoids substitution clustering method based on the idea of simplex method after discussing k-means and k-mediods. This algorithm is more effective and less sensitive to initial medoids sets than k-means or k-medoids based on analysis of the discrepancy of searching policy and simulation experiment results, when clustering those data-point sets with some similar-sized clusters. The experimental figures, which illustrates the relationship between the final average value of the clustering objective function and the number of the clusters, shows as an experimental rule that the optimal number of clusters often locates at a corner position where the quickly degressive segment of the final average value of the clustering objective function turns to the slowly degressive segment with the step-by-step increasing of the number of the clusters. Obviously, this experimental rule is more encouraging and intuitive to understand.
机译:它介绍了基于k-mease和k-mediods之后的单纯形方法的k-myoids替代聚类方法。该算法对初始麦细多于K-Meadoids或K-meys的算法,基于分析搜索策略和仿真实验结果的差异,当与一些类似尺寸的群集聚类这些数据点集时,对初始MENOIDS组比K-MEARE或K-METOIDS更敏感。实验数据,其示出了聚类目标函数的最终平均值与集群的数量之间的关系,作为实验规则,即最佳集群的最佳数量通常位于最终的瞬间出产段的角落位置聚类目标函数的平均值转向缓慢消耗的段,逐步增加簇的数量。显然,这种实验规则更令人鼓舞和直观地理解。

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