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Support Vector Machines for Unbalanced Multicategory Classification

机译:不平衡多类别分类的支持向量机

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摘要

Classification is a very important research topic and its applications are various, because data can be easily obtained in these days. Among many techniques of classification the support vector machine (SVM) is widely applied to bioinformatics or genetic analysis, because it gives sound theoretical background and its performance is superior to other methods. The SVM can be rewritten by a combination of the hinge loss function and the penalty function. The smoothly clipped absolute deviation penalty function satisfies desirably statistical properties. Since standard SVM techniques typically treat all classes equally, it is not well suited to unbalanced proportion data. We propose a robust method to treat unbalanced cases based on the weights of the class. Simulation and a numerical example show that the proposed method is effective to analyze unbalanced proportion data.
机译:分类是一个非常重要的研究主题,它的用途是多种多样的,因为在这些日子中可以轻松获得数据。在许多分类技术中,支持向量机(SVM)被广泛应用于生物信息学或遗传分析,因为它具有良好的理论背景并且其性能优于其他方法。可以通过铰链损失函数和惩罚函数的组合来重写SVM。平滑限幅的绝对偏差罚分函数满足统计特性。由于标准SVM技术通常平等地对待所有类别,因此它不适用于不平衡比例数据。我们根据类的权重提出了一种稳健的方法来处理不平衡的案例。仿真和算例表明,该方法对不平衡比例数据的分析是有效的。

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