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An ensemble classifier method for classifying data streams with recurrent concept drift

机译:具有复制概念漂移的数据流分类的合奏分类方法

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In order to solve the problem that existing ensemble classifier algorithms can't recognize the recurrent concept drift effectively, a new algorithm called Historical Classifier Ensembles for classification (HCE) is proposed. By storing the historical classifiers and ensembles, the algorithm can make full use of the historical concept information and can improve the classification efficiency and accuracy in data stream classification with concept drifts. The experiment results show that the HCE algorithm adapts better to data streams environment with implied recurrent concept drifts.
机译:为了解决现有的集合分类器算法无法有效地识别经常性概念的问题,提出了一种新的算法,称为分类(HCE)的历史分类器合奏。通过存储历史分类器和集合,该算法可以充分利用历史概念信息,可以提高数据流分类中的分类效率和准确性,概念漂移。实验结果表明,HCE算法更好地适应数据流环境,具有隐含的反复概念漂移。

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