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A new resampling method of imbalanced large data based on class boundary

机译:基于类边界的不平衡大数据重采样新方法

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We propose a new method for the calculation of class boundary. Through the compression of large data sets, the method can remove the samples which are not in the class boundary and have little effect on the classification results. It can also improve the classification accuracy of the traditional algorithm by selecting appropriate threshold. For the imbalanced data sets, this method can remove the samples of majority class on the class boundary and improve the classification performance of the minority class. The experiment has demonstrated that the method is effective.
机译:我们提出了一种计算类边界的新方法。通过压缩大数据集,该方法可以去除不在类边界内且对分类结果影响很小的样本。通过选择合适的阈值还可以提高传统算法的分类精度。对于不平衡的数据集,该方法可以去除类别边界上多数类别的样本,提高少数类别的分类性能。实验证明该方法是有效的。

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