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Multiple birth support vector machine for multi-class classification

机译:用于多种分类的多胎支持向量机

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摘要

For multi-class classification problem, a novel algorithm, called as multiple birth support vector machine (MBSVM), is proposed, which can be considered as an extension of twin support vector machine. Our MBSVM has been compared with the several typical support vector machines. From theoretical point of view, it has been shown that its computational complexity is remarkably low, especially when the class number K is large. Based on our MBSVM, the dual problems of MBSVM are equivalent to symmetric mixed linear complementarity problems to which successive overrelaxation (SOR) can be directly applied. We establish our SOR algorithm for MBSVM. The SOR algorithm handles one data point at a time, so it can process large dataset that need no reside in memory. From practical point of view, its accuracy has been validated by the preliminary numerical experiments.
机译:针对多类分类问题,提出了一种新的算法,称为多重出生支持向量机(MBSVM),可以看作是双支持向量机的扩展。我们的MBSVM已与几种典型的支持向量机进行了比较。从理论的角度来看,已表明其计算复杂度非常低,尤其是当类别数K大时。基于我们的MBSVM,MBSVM的双重问题等同于对称混合线性互补问题,可以直接应用连续超松弛(SOR)。我们为MBSVM建立了SOR算法。 SOR算法一次只能处理一个数据点,因此它可以处理不需要驻留在内存中的大型数据集。从实用的角度来看,其准确性已通过初步的数值实验得到了验证。

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