Distributed single pass clustering algorithm based on MapReduce

Abdelrahman Elsayed, Osama Ismael, Hoda M. O. Mokhtar
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引用次数: 1

Abstract

Available data increase quickly every moment, this eventually drags to big data flooding. Hence there is an emergent need for exploiting big data in order to extract valuable knowledge from it. Adoption of distributed architecture and data intensive algorithms facilitates handling and processing big data. This paper introduces a distributed single pass clustering algorithm based on MapReduce in order to reduce running time of processing big data. Also, it introduces median based single pass clustering in order to mitigate the order of the input data problem that is associated with single pass clustering. Furthermore, it introduces a new hybrid approach which integrates median based single pass clustering and k-means algorithm. The proposed integration improves the median based clustering to work well with sparse data such as text. The experimental results state that the proposed approaches outperform traditional single pass clustering.
基于MapReduce的分布式单遍聚类算法
可用数据每时每刻都在快速增长,最终导致大数据泛滥。因此,迫切需要利用大数据,以便从中提取有价值的知识。采用分布式架构和数据密集型算法,便于大数据的处理和处理。为了减少处理大数据的运行时间,本文介绍了一种基于MapReduce的分布式单次聚类算法。此外,它还引入了基于中值的单次聚类,以减轻与单次聚类相关的输入数据问题的顺序。在此基础上,提出了一种基于中值的单次聚类与k-means算法相结合的混合聚类方法。提出的集成改进了基于中值的聚类,可以很好地处理稀疏数据(如文本)。实验结果表明,该方法优于传统的单次聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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