PSON: A Parallelized SON Algorithm with MapReduce for Mining Frequent Sets

Tao Xiao, C. Yuan, Y. Huang
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引用次数: 8

Abstract

Many algorithms have been proposed in past decades to efficiently mine frequent sets in transaction database, including the SON Algorithm proposed by Savasere, Omiecinski and Navathe. This paper introduces the SON algorithm, explains why SON is very suitable to be parallelized, and illustrates how to adapt SON to the MapReduce paradigm. Then we propose a parallelized SON algorithm, PSON, and implement it in Hadoop. Our study suggests that PSON can mine frequent item sets from a very large database with good performance. The experimental results show that when performing frequent sets mining, the time cost will increase almost linearly with the size of the datasets and decrease with approximately linear trend with the number of cluster nodes. Consequently, we conclude that PSON works well for solving the frequent set mining problem from massive datasets with a good performance in both scalability and speed-up.
基于MapReduce的频繁集挖掘并行化SON算法
在过去的几十年里,人们提出了许多算法来有效地挖掘事务数据库中的频繁集,其中包括由Savasere、Omiecinski和Navathe提出的SON算法。本文介绍了SON算法,解释了为什么SON非常适合并行化,并说明了如何使SON适应MapReduce范式。然后,我们提出了一种并行化的SON算法,并在Hadoop中实现。我们的研究表明,PSON可以从非常大的数据库中挖掘频繁项集,并且性能良好。实验结果表明,在进行频繁集挖掘时,时间成本随数据集的大小几乎呈线性增加,随聚类节点的数量呈近似线性减少。因此,我们得出结论,PSON可以很好地解决大量数据集的频繁集挖掘问题,并且在可扩展性和加速方面都具有良好的性能。
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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