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Simplify Decision Function of Reduced Support Vector Machines

机译:简化约简支持向量机的决策功能

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Reduced Support Vector Machines (RSVM) was proposed as the alternate of standard support vector machines (SVM) in order to resolve the difficulty in the learning of nonlinear SVM for large data set problems. RSVM preselects a subset as support vectors and solves a smaller optimization problem, and it performs well with remarkable efficiency on training of SVM for large problem. All the training points of the subset will be support vectors, and more training points are selected into this subset results in high possibility to obtain RSVM with better generalization ability. So we first obtain the RSVM with more support vectors, and selects out training examples near classification hyper plane. Then only these training examples are used as training set to obtain a standard SVM with less support vector than that of RSVM. Computational results show that standard SVMs on the basis of RSVM have much less support vectors and perform equal generalization ability to that of RSVM. ...
机译:提出了缩减支持向量机(RSVM)作为标准支持向量机(SVM)的替代方案,以解决针对大型数据集问题学习非线性SVM的困难。 RSVM预先选择一个子集作为支持向量,并解决了一个较小的优化问题,并且在针对大问题的SVM训练中表现出色,效率很高。该子集的所有训练点将是支持向量,并且在该子集中选择更多的训练点将导致获得具有更好泛化能力的RSVM的可能性很高。因此,我们首先获得具有更多支持向量的RSVM,然后从分类超平面附近选择训练示例。然后,仅将这些训练示例用作训练集,以获取支持向量比RSVM少的标准SVM。计算结果表明,基于RSVM的标准SVM具有更少的支持向量,并且具有与RSVM相同的泛化能力。 ...

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