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Entropy Based Mean Clustering: An Enhanced Clustering Approach

机译:基于熵的均值聚类:一种增强的聚类方法

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Many applications of clustering require the use of normalized data, such as text data or mass spectra mining data. The K –Means Clustering Algorithm is one of the most widely used clustering algorithm which works on greedy approach. Major problems with the traditional K mean clustering is generation of empty clusters and more computations required to make the group of clusters. To overcome this problem we proposed an Algorithm namely Entropy Based Means Clustering Algorithm. The proposed Algorithm produces normalized cluster centers, hence highly useful for text data or massive data. The proposed algorithm shows better performance when compared with traditional K Mean Clustering Algorithm in mining data in terms of reducing time, seed predications and avoiding Empty Clusters.
机译:群集的许多应用程序需要使用规范化数据,例如文本数据或质谱图挖掘数据。 K-均值聚类算法是在贪婪方法下工作最广泛的聚类算法之一。传统的K均值聚类的主要问题是空聚类的生成以及组成聚类组所需的更多计算。为了克服这个问题,我们提出了一种算法,即基于熵的均值聚类算法。所提出的算法产生标准化的聚类中心,因此对于文本数据或海量数据非常有用。与传统的K均值聚类算法相比,该算法在减少数据时间,减少种子预测和避免空簇方面具有更好的性能。

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