不平衡极值支持向量机

Xu Zhou, Shuxia Lu, Lisha Hu, Meng Zhang
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引用次数: 2

摘要

针对标准极值支持向量机(ESVM)未讨论的数据分类不平衡问题,提出了一种非平衡极值支持向量机(IESVM)。首先,通过几何分析直接得到分离超平面的初步法向量;其次,根据投影到初步法向量上的数据集提供的信息获得惩罚因子;最后,通过改进的ESVM训练得到最终的分离超平面。IESVM克服了传统设计方法只考虑样本大小不平衡的缺点,提高了ESVM的泛化能力。实验结果表明,该方法可以有效地提高对不平衡数据集的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Imbalanced extreme support vector machine
For the problem of imbalanced data classification which was not discussed in the standard Extreme Support Vector Machines (ESVM), an imbalanced extreme support vector machines (IESVM) was proposed. Firstly, a preliminary normal vector of separating hyperplane is obtained directly by geometric analysis. Secondly, penalty factors are obtained which are based on the information provided by data sets projecting onto the preliminary normal vector. Finally, the final separation hyperplane is got through the improved ESVM training. IESVM can overcome disadvantages of traditional designing methods which only consider the imbalance of samples size and can improve the generalization ability of ESVM. Experimental results show that the method can effectively enhance the classification performance on imbalanced data sets.
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