基于Hadoop的空间优化等分k均值(BKM)实现

Y. Yin, Chengguang Wei, Guigang Zhang, C. Li
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引用次数: 1

摘要

本文是在对科学领域的共同作者现象进行研究的背景下构成的事实基础。通过对海量关系数据的研究,对检索和获取专业学术信息,了解杂领域学术发展趋势具有重要的理论和实践意义。在研究这类项目的过程中,涉及到数据中共同作者的杂乱问题。然而,现有的杂化软件和算法很难满足对海量数据杂化分析的需要,因此,寻找一种处理这类问题的方法是非常重要的。为了解决这一问题,本文在分析研究现状的基础上,提出了一种基于Hadoop的优化的BKM (bisding K-Means)聚类算法,并详细阐述了算法的优化方式和实现要点。通过实验对算法的复杂度进行估计,指出了目前存在的问题和今后的研究方向。
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Implementation of Space Optimized Bisecting K-Means (BKM) Based on Hadoop
This article is composed in the background of the study of scientific field of coauthors phenomenon factual basis. By the study of massive amounts of relational data, it provides us with major significances theoretically and practically on retrieving and obtaining professionally academic information and getting knowing of academic development trend of miscellaneous fields. In process of studying this type of project, the problem of cluttering for coauthors that are in the data is involved. However, it is hard to meet the need of implementing the analysis of massive amounts of data cluttering by the existing cluttering software and algorithms, for this reason, finding an approach to deal with this kind of question is toughly important. To solve this question, this article presents an optimized Bisecting K-Means (BKM) clustering algorithm based on Hadoop and states the fashion of how to optimize the algorithm and the key point of implementing in details after analyzing the status quo related to this study. Estimating the complexity of the algorithm by experiments indicates the current problems and the direction for the future study.
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