密度K-means:一种新的K-means中心初始化算法

Xv Lan, Qian Li, Yi Zheng
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引用次数: 13

摘要

K-means是数据挖掘中最重要的聚类算法之一。它在许多情况下都表现良好,特别是在海量数据集中。然而,K-means聚类的结果很大程度上依赖于初始中心,这使得K-means难以达到全局最优。在本文中,我们开发了一种基于寻找密度峰的新算法来优化K-means的初始中心。在实验中,与我们的算法一起,在4个知名的测试数据集上对9种不同的聚类算法进行了广泛的比较。实验结果表明,该算法的性能明显优于其他八种算法,这表明该算法是一种有价值的K-means初始中心选择方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Density K-means: A new algorithm for centers initialization for K-means
K-means is one of the most significant clustering algorithms in data mining. It performs well in many cases, especially in the massive data sets. However, the result of clustering by K-means largely depends upon the initial centers, which makes K-means difficult to reach global optimum. In this paper, we developed a novel algorithm based on finding density peaks to optimize the initial centers for K-means. In the experiment, together with our algorithm, nine different clustering algorithms were extensively compared on four well-known test data sets. According to our experimental results, the performance of our algorithm is significantly better than other eight algorithms, which indicates that it is a valuable method to select initial center for K-means.
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