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Local neighbourhood extension of SMOTE for mining imbalanced data

机译:SMOTE的本地邻域扩展,用于挖掘不平衡数据

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In this paper we discuss problems of inducing classifiers from imbalanced data and improving recognition of minority class using focused resampling techniques. We are particularly interested in SMOTE over-sampling method that generates new synthetic examples from the minority class between the closest neighbours from this class. However, SMOTE could also overgeneralize the minority class region as it does not consider distribution of other neighbours from the majority classes. Therefore, we introduce a new generalization of SMOTE, called LN-SMOTE, which exploits more precisely information about the local neighbourhood of the considered examples. In the experiments we compare this method with original SMOTE and its two, the most related, other generalizations Borderline and Safe-Level SMOTE. All these pre-processing methods are applied together with either decision tree or Naive Bayes classifiers. The results show that the new LN-SMOTE method improves evaluation measures for the minority class.
机译:本文讨论了使用聚焦重采采样技术从不平衡数据诱导分类器的诱导识别的问题。我们特别感兴趣地阐述了从该类中最近邻居之间的少数群体的新综合实例产生的。但是,SMOTE也可以通过少数群体地区进行全面化,因为它不考虑从多数课程分配其他邻居。因此,我们介绍了一个名为LN-Smote的麦图的新的概括,这更精确地利用了关于所考虑的例子的本地社区的信息。在实验中,我们将这种方法与原始麦图及其两个,最相关的其他概括边界和安全级别的界定进行比较。所有这些预处理方法都与决策树或幼稚贝叶斯分类器一起应用。结果表明,新的LN-Smote方法改善了少数阶级的评价措施。

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