高维分类数据的集成聚类方法

K. Kalaivani, A. Raghavendra
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引用次数: 2

摘要

聚类是数据挖掘中的一项重要任务,具有广泛的应用前景。然而,早期的聚类研究只关注基于属性值对相似类型数据进行分组的分类数据,这将导致聚类过程的收敛性问题。本文提出的工作是有效地改进现有的基于分类和混合数据类型的k-means聚类过程。目标是使用基于高维分类数据的集成聚类方法,该方法可以很好地处理具有混合连续和分类特征的数据。在多个数据集上的实验结果表明,基于链接的聚类集成算法与本文提出的k-means算法相结合,可以得到准确的聚类结果。该算法证明了聚类过程的收敛性,从而提高了聚类结果的准确性。当用户想要访问数据库中的数据时,这个建议工作的范围用于提供准确和有效的结果。
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An integrated clustering approach for high dimensional categorical data
Clustering is an attractive and important task in data mining which is used in many applications. However earlier work on clustering focused on only categorical data which is based on attribute values for grouping similar kind of data items thus will leads to convergence problem of clustering process. This proposed work is to enhance the existing k-means clustering process based on the categorical and mixed data types in efficient manner. The goal is to use integrated clustering approach based on high dimensional categorical data that works well for data with mixed continuous and categorical features. The experimental results of the proposed method on several data sets are suggest that the link based cluster ensemble algorithm integrate with proposed k-means algorithm to produce accurate clustering results. In this proposed algorithm prove the convergence property of clustering process, thus will improve the accuracy of clustering results. The scope of this proposed work is used to provide the accurate and efficient results, whenever the user wants to access the data from the database.
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