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Feature Space Oversampling Technique for Imbalanced Classification

机译:具有不平衡分类的特征空间过采样技术

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The classification problem with imbalanced data is very common in real world. With traditional classification methods, it is generally difficult to obtain satisfactory classification results. Oversampling provides a feasible solution to this kind of classification problems. Existing oversampling methods generally choose borderline minority samples to generate new samples. It would result in too many synthetic minority class samples are in the boundary region such that the original boundary between different classes is changed. To deal with this issue, a feature space oversampling technique (FSOTE) is presented in this study. By the FSOTE algorithm, the minority class clusters are indeed found from the feature space, and the synthetic minority class samples are uniformly filled in the interior of these clusters. Tested on some widely adopted imbalance data sets, it confirms that the classification accuracy is effectively improved by the proposed FSOTE than by some previous methods.
机译:数据的分类问题在现实世界中非常常见。 以传统的分类方法,通常难以获得满意的分类结果。 过采样为这种分类问题提供了可行的解决方案。 现有的过采样方法通常选择边界少数群体样本以产生新样本。 它会导致太多的合成少数群体类样本在边界区域中,使得不同类之间的原始边界改变。 要处理此问题,本研究提出了一种特征空间过采样技术(FSOTE)。 通过FSOTE算法,从特征空间中发现少数群体集群,并且合成少数群体样本均匀地填充在这些簇的内部。 在一些广泛采用的不平衡数据集上进行了测试,它证实了所提出的FSOTE的分类准确性而不是一些先前的方法。

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