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Imbalanced ELM Based on Normal Density Estimation for Binary-Class Classification

机译:基于正态密度估计的二元分类不平衡ELM

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The imbalanced Extreme Learning Machine based on kernel density estimation (imELM-kde) is a latest classification algorithm for handling the imbalanced binary-class classification. By adjusting the real outputs of training data with intersection point of two probability density f unctions (p.d.f.s) corresponding to the predictive outputs of majority and minority classes, imELM-kde updates ELM which is trained based on the original training data and thus improves the performance of ELM-based imbalanced classifier. In this paper, we analyze the shortcomings of imELM-kde and then propose an improved version of imELM-kde. The Parzen window method used in imELM-kde leads to multiple intersection points between p.d.f.s of majority and minority classes. In addition, it is unreasonable to update the real outputs with intersection point, because the p.d.f.s are estimated based on the predictive outputs. Thus, in order to improve the shortcomings of imELM-kde, an imbalanced ELM based on normal density estimation (imELM-nde) is proposed in this paper. In imELM-nde, the p.d.f.s of predictive outputs corresponding to majority and minority classes are computed with normal density estimation and the intersection point is used to update the predictive outputs instead of real outputs. This makes the training of probability density estimation-based imbalanced ELM simpler and more feasible. The comparative results show that our proposed imELM-nde performs better them unweighted ELM and imELM-kde for imbalanced binary-class classification problem.
机译:基于核密度估计的不平衡极限学习机(imELM-kde)是用于处理不平衡二进制分类的最新分类算法。通过使用对应于多数和少数类别的预测输出的两个概率密度函数(pdfs)的交点调整训练数据的实际输出,imELM-kde更新了基于原始训练数据进行训练的ELM,从而提高了性能基于ELM的不平衡分类器。在本文中,我们分析了imELM-kde的缺点,然后提出了改进的imELM-kde版本。 imELM-kde中使用的Parzen窗口方法导致多数和少数类别的p.d.f.s之间有多个交点。另外,用交点更新实际输出是不合理的,因为p.d.f.s是根据预测输出估算的。因此,为了改善imELM-kde的缺点,本文提出了一种基于正常密度估计的不平衡ELM(imELM-nde)。在imELM-nde中,对应于多数和少数类别的预测输出的p.d.f.s用正态密度估计来计算,并且交点用于更新预测输出而不是实际输出。这使得基于概率密度估计的不平衡ELM的训练更加简单可行。对比结果表明,我们提出的imELM-nde在不加权的ELM和imELM-kde上对于不平衡的二元类分类问题表现更好。

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