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CFSBC: Clustering in High-Dimensional Space Based on Closed Frequent Item Set

机译:CFSBC:基于封闭频繁项集的高维空间聚类

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摘要

Clustering in high-dimensional space is an important domain in data mining. It is the process of discovering groups in a high-dimensional dataset, in such way, that the similarity between the elements of the same cluster is maximum and between different clusters is minimal. Many clustering algorithms are not applicable to high-dimensional space for its sparseness and decline properties. Dimensionality reduction is an effective method to solve this problem. The paper proposes a novel clustering algorithm CFSBC based on closed frequent itemsets derived from association rule mining, which can get the clustering attributes with high efficiency. The algorithm has several advantages. First, it deals effectively with the problem of dimensionality reduction. Second, it is applicable to different kinds of attributes. Third, it is suitable for very large data sets. Experiment shows that the proposed algorithm is effective and efficient.
机译:高维空间中的聚类是数据挖掘中的重要领域。以这种方式发现高维数据集中的组的过程是,同一聚类的元素之间的相似性最大,而不同聚类之间的相似性最小。许多聚类算法由于其稀疏和衰落特性而不适用于高维空间。降维是解决此问题的有效方法。提出了一种新的基于关联规则挖掘的封闭频繁项集的聚类算法CFSBC,可以高效地获得聚类属性。该算法具有几个优点。首先,它有效地处理了降维问题。其次,它适用于不同种类的属性。第三,它适用于非常大的数据集。实验表明,该算法是有效的。

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