題名: A High-Speed Feature Selection Method For Large Dimensional Data Set
作者: Chen, Wei-Chou
Yang, Ming-Chun
Tseng, Shian-Shyong
關鍵字: bitmap feature selection method
performance
feature selection
bitmap indexing
rough set
期刊名/會議名稱: 2002 ICS會議
摘要: Feature selection is about finding useful (relevant) features to describe an application domain. The problem of finding the minimal subsets of Features that can describe all of the concepts in the given data set is NP-hard. In the past, we had proposed an feature selection method, that originated from rough set and bitmap indexing techniques, to select the optimal (minimal) feature set for the given data set efficiently. Although our method is sufficient to guarantee a solution’s optimality, the computation cost is very high when the number of features is huge. In this paper, we propose the nearly optimal feature selection method, called bitmap-based feature selection method with discernibility matrix, which employs a discernibility matrix to record the important features during the construction of the cleansing tree to reduce the processing time. And the corresponding indexing and selecting algorithms for such feature selection method are also proposed. Finally, some experiments and comparisons are given and the result shows the efficiency and accuracy of our proposed method.
日期: 2006-10-24
分類:2002年 ICS 國際計算機會議

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