K-Means Clustering Algorithm for Large-Scale Chinese Commodity Information Web Based on Hadoop

Geng Yu-shui, Zhang Lishuo
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引用次数: 3

Abstract

With the growing popularity of the network, product information filled in the many pages of the Internet, which you want to get the information you need on these pages tend to consider clustering information, and the current explosive growth of data so that the information mass storage condition occurs, clustering to facing the problems such as large calculation complexity and time consuming, then the traditional K-Means clustering algorithm does not meet the needs of large data environments today, so this article combined with the advantages of the Hadoop platform and MapReduce programming model is proposed the K-Means clustering algorithm for large-scale Chinese commodity information Web based on Hadoop. Map function calculates the distance from the cluster center for each sample and mark to their category, Reduce function intermediate results are summarized and calculated new clustering center for the next round of iteration. Experimental results show that this method can better improve the clustering processing speed.
基于Hadoop的大规模中文商品信息Web K-Means聚类算法
随着网络的日益普及,产品信息填充在互联网的许多页面上,其中你想要在这些页面上获得你所需要的信息往往会考虑聚类信息,而当前数据的爆炸式增长使得信息的海量存储条件发生,聚类要面临计算复杂度大、耗时长等问题。那么传统的K-Means聚类算法已经不能满足当今大数据环境的需要,因此本文结合Hadoop平台和MapReduce编程模型的优势,提出了基于Hadoop的面向大规模中文商品信息Web的K-Means聚类算法。Map函数计算每个样本到聚类中心的距离并标记到它们的类别,Reduce函数对中间结果进行汇总并计算出新的聚类中心,用于下一轮迭代。实验结果表明,该方法能较好地提高聚类处理速度。
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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