An Active Under-Sampling Approach for Imbalanced Data Classification

Zeping Yang, Daqi Gao
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引用次数: 15

Abstract

An active under-sampling approach is proposed for handling the imbalanced problem in this paper. Traditional classifiers usually assume that training examples are evenly distributed among different classes, so they are often biased to the majority class and tend to ignore the minority class. in this case, it is important to select the suitable training dataset for learning from imbalanced data. the samples of the majority class which are far away from the decision boundary should be got rid of the training dataset automatically in our algorithm, and this process doesn't change the density distribution of the whole training dataset. as a result, the ratio of majority class is decreased significantly, and the final balance training dataset is more suitable for the traditional classification algorithms. Compared with other under-sampling methods, our approach can effectively improve the classification accuracy of minority classes while maintaining the overall classification performance by the experimental results.
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不平衡数据分类的主动欠采样方法
本文提出了一种主动欠采样方法来处理不平衡问题。传统的分类器通常假设训练样例均匀分布在不同的类中,因此往往偏向多数类而忽略少数类。在这种情况下,选择合适的训练数据集从不平衡数据中学习是很重要的。算法将远离决策边界的多数类样本自动从训练数据集中剔除,该过程不会改变整个训练数据集的密度分布。因此,多数类的比例显著降低,最终的平衡训练数据集更适合传统的分类算法。与其他欠采样方法相比,我们的方法可以有效地提高少数类的分类精度,同时保持实验结果的整体分类性能。
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