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Modification to K-Medoids and CLARA for Effective Document Clustering

机译:修改K-METOIDS和CLARA以获得有效的文件集群

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Document clustering plays an important role in several applications. K-Medoids and CLARA are among the most notable algorithms for clustering. These algorithms together with their relatives have been employed widely in clustering problems. In this paper we present a solution to improve the original K-Medoids and CLARA by making change in the way they assign objects to clusters. Experimental results on various document datasets using three distance measures have shown that the approach helps enhance the clustering outcomes substantially as demonstrated by three quality metrics, i.e. Entropy, Purity and F-Measure.
机译:文档群集在几个应用程序中扮演着重要作用。 K-medoids和Clara是聚类最值得注意的算法之一。这些算法与其亲属一起被广泛使用在聚类问题中。在本文中,我们通过将对象分配给集群的方式进行更改,提出一种解决原始k-medoids和clara的解决方案。使用三个距离措施的各种文献数据集的实验结果表明,该方法有助于提高聚类结果,基本上如三种质量指标所证明的,即熵,纯度和F测量。

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