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计算机应用研究 2012
New classifier ensemble method based on rough set attribute reduction
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Abstract:
To improve the accuracy of multiple classifier system, this paper proposed an classifier ensemble method MCS_ARS. This method used rough set attribute reduction and data partition to obtain a number of features subset and data subset to train base classifier, then it used the similarity of the classification results to get the results of validation set and got the final classification results of validation set by majority voting. Experiment results on UCI data sets show that compared to classical ensemble methods, MCS_ARS has higher classification accuracy and stability.