频繁封闭信息项集挖掘

Huaiguo Fu, Mícheál Ó Foghlú, W. Donnelly
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引用次数: 14

摘要

近年来,聚类分析和关联分析在生物医学数据分析等大数据分析中备受关注。提出了一种新的频繁闭项集挖掘算法。该算法解决了数据挖掘的两大挑战:挖掘大、高维数据和解释数据挖掘的结果。频繁项集挖掘是关联分析的关键任务。该算法基于概念格结构,生成频繁闭项集,降低了挖掘所有频繁项集的复杂度,并且每个频繁闭项集具有更多的信息,便于对挖掘结果的解释。从这一特点出发,讨论了该算法在聚类分析中的扩展。实验结果表明了该算法的有效性。
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Frequent Closed Informative Itemset Mining
In recent years, cluster analysis and association analysis have attracted a lot of attention for large data analysis such as biomedical data analysis. This paper proposes a novel algorithm of frequent closed itemset mining. The algorithm addresses two challenges of data mining: mining large and high dimensional data and interpreting the results of data mining. Frequent itemset mining is the key task of association analysis. The algorithm is based on concept lattice structure so that frequent closed itemsets can be generated to reduce the complicity of mining all frequent itemsets and each frequent closed itemset has more information to facilitate interpretation of mining results. From this feature, the paper also discusses the extension of the algorithm for cluster analysis. The experimental results show the efficiency of this algorithm.
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