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Classification of High-dimensional Data Clustering Based on Rules Mining Research

机译:基于规则挖掘研究的高维数据聚类分类

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on the classification of high-dimensional data clustering analysis, traditional similarity index and dimension reduction based on clustering analysis method is hard to avoid "dimension disaster" problem or sampling errors. Therefore, on the basis of choosing the most sub space of the rough set theory, the article directly make a research of the classification of high dimensional data clustering theory mode through to the "equivalence relation" rule mining. Besides, through the China mobile company five cities sampling data of the loss of cell phone users, we has carried on the empirical test and a better clustering results are obtained. In the comparison of KMeans, Two-step and Kohonen methods of clustering, In this paper, classification of high-dimensional data clustering method based on equivalence relation in the type definition, rule mining, the number of iterations which has unique advantages and variable selection.
机译:在对高维数据进行聚类分析的分类上,传统的基于聚类分析的相似度指标和降维方法难以避免“维数灾难”问题或抽样误差。因此,本文在选择粗糙集理论的最大子空间的基础上,通过“等价关系”规则挖掘,直接对高维数据聚类理论模型的分类进行了研究。此外,通过中国移动公司对五个城市手机用户流失的抽样数据,我们进行了实证检验,得到了较好的聚类结果。在比较KMeans,两步法和Kohonen聚类方法的基础上,本文基于等价关系对高维数据聚类方法进行分类定义,规则挖掘,迭代次数具有独特的优势和变量选择。

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