An ensemble classifier based on attribute measurement of rough sets
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摘要: 為了準確度量屬性的重要性,從基于粗糙集的屬性度量視角,提出一種基于混合度量機制的屬性評價方法,該方法從不同的信息粒度分析屬性的重要性.在混合度量機制中,根據數據分布特點引入參數權重因子.在此基礎上,構造一種基于粗糙集屬性度量機制的集成分類器.通過實驗結果和比較分析表明,所提出的方法能有效地降低數據的屬性維度,相比較于單一屬性度量準則,分類器具有更好的分類性能.Abstract: From the viewpoint of the attribute measurement of rough sets,a new attribute measurement based on the hybrid metric mechanism was provided to accurately evaluate the significance of attributes. This proposed attribute measurement analyzes the significance of attributes from different levels of information granularity. In addition,a parameter weighting factor was introduced to the attribute measurement according to the characteristics of data distribution. On this basis,an ensemble classifier was constructed based on the proposed attribute measurement mechanism in rough sets. Experimental results and comparative analysis show that the proposed method can effectively reduce the attribute dimension of data. Compared with the single attribute measurement,the proposed method has a better classification performance.
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Key words:
- data mining /
- attributes /
- measurement /
- classifiers /
- rough set theory
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