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A Density-Based Method for Selection of the Initial Clustering Centers of K-means Algorithm

机译:基于密度的选择方法,用于选择K-Means算法的初始聚类中心

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The initial clustering centers of traditional K-means algorithm are randomly generated from a data set, clustering effect is not very stable. Aimed at this problem, this paper puts forward a kind of optimal selection of the initial clustering center of K-means algorithm based on density, by calculating the local density of each data point and the minimum distance between that point and any other point with higher local density, choose K points with higher local density as the initial clustering centers. Through the UCI standard database for contrast experiment, proved that the improved K-means algorithm can eliminate the dependence on the initial clustering center, has relatively higher accuracy and stability than the traditional algorithm.
机译:传统k-means算法的初始聚类中心是从数据集随机生成的,聚类效果不是很稳定。旨在解决这个问题,通过计算每个数据点的局部密度和该点之间的最小距离和更高的任何其他点的局部密度,提出了一种基于浓度的初始聚类中心的最佳选择K-Means算法的初始聚类中心。局部密度,选择具有较高局部密度的K点作为初始聚类中心。通过UCI标准数据库进行对比度实验,证明了改进的K均值算法可以消除对初始聚类中心的依赖性,具有比传统算法更高的准确性和稳定性。

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