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SMOTE based class-specific extreme learning machine for imbalanced learning

机译:基于SMOTE的针对特定班级的极端学习机,可实现不均衡学习

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Imbalanced learning is one of the substantial challenging problems in the field of data mining. The datasets that have skewed class distribution pose hindrance to conventional learning methods. Conventional learning methods give the same importance to all the samples. This leads to biased accuracy, which favors the majority classes. Several classifiers have been designed to tackle the class imbalance problems. Weighted kernel-based SMOTE (WKSMOTE) is a recently proposed method, which employs the minority oversampling in kernel space to tackle the class imbalance problem. Motivated by WKSMOTE, this work proposes a novel SMOTE based class-specific extreme learning machine (SMOTE-CSELM), a variant of class-specific extreme learning machine (CS-ELM), which exploits the benefit of both the minority oversampling and the class-specific regularization. For minority oversampling, this work uses synthetic minority oversampling technique (SMOTE). It increases the significance of the minority class samples for determining the decision region of the classifiers. The proposed method has comparable computational complexity than the weighted extreme learning machine (WELM) for imbalanced learning. The extensive experimental results evaluated on the real-world benchmark datasets demonstrate the efficacy of our proposed method. (C) 2019 Elsevier B.V. All rights reserved.
机译:学习不平衡是数据挖掘领域中具有挑战性的重大问题之一。班级分布偏斜的数据集阻碍了传统的学习方法。常规学习方法对所有样本都具有相同的重要性。这导致准确性出现偏差,这有利于大多数类别。设计了几种分类器来解决类不平衡问题。基于加权内核的SMOTE(WKSMOTE)是最近提出的一种方法,该方法利用内核空间中的少数过采样来解决类不平衡问题。受WKSMOTE的启发,这项工作提出了一种新颖的基于SMOTE的基于班级的极限学习机(SMOTE-CSELM),这是基于班级的极限学习机(CS-ELM)的变体,它利用了少数群体过度采样和班级的优势特定的正则化。对于少数群体过度采样,这项工作使用合成的少数群体过度采样技术(SMOTE)。它增加了少数类样本对确定分类器决策区域的重要性。与不平衡学习的加权极限学习机(WELM)相比,该方法的计算复杂度可比。在真实基准数据集上评估的大量实验结果证明了我们提出的方法的有效性。 (C)2019 Elsevier B.V.保留所有权利。

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