基于并行K-means算法的MapReduce文档聚类效率分析

Tanvir Habib Sardar, Zahid Ansari
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引用次数: 46

摘要

聚类是重要的数据挖掘技术之一。由于各个领域的扩展和数字化,大型数据集正在迅速生成。如此大的数据集聚类对于传统的顺序聚类算法来说是一个巨大的挑战。因此,分布式并行架构和算法有助于实现大型数据集聚类的性能和可扩展性要求。在本研究中,我们设计并实验了一种基于MapReduce编程模型的并行k-means算法,并将结果与顺序k-means算法进行了比较,用于不同大小文档数据集的聚类。结果表明,提出的k-means在聚类文档时获得了更高的性能,并且优于顺序k-means。
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An analysis of MapReduce efficiency in document clustering using parallel K-means algorithm

One of the significant data mining techniques is clustering. Due to expansion and digitalization of each field, large datasets are being generated rapidly. Such large dataset clustering is a challenge for traditional sequential clustering algorithms due to huge processing time. Distributed parallel architectures and algorithms are thus helpful to achieve performance and scalability requirement of clustering large datasets. In this study, we design and experiment a parallel k-means algorithm using MapReduce programming model and compared the result with sequential k-means for clustering varying size of document dataset. The result demonstrates that proposed k-means obtains higher performance and outperformed sequential k-means while clustering documents.

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