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Improved Multi-class Support Vector Machines Using Novel Methods of Model Selection and Feature Extraction

机译:使用模型选择和特征提取的新方法改进的多类支持向量机

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In this paper, to improve the generalization capability of multi-class SVMs, we propose (1) a novel model selection and (2) feature extraction by SVMs. In (1), unlike the conventional model selection in multi-class SVMs, we determine hyper-parameters, which are kernel parameter and margin parameter, for each separating hyper-plane, separately. Namely, for each separating hyper-plane, we estimate the generalization capability and select optimal values of the hyper-parameters, separately. In (2), we define the weighted vectors of decision functions determined by training multi-class SVMs as the basis vector of the sub-space, and we determine the separating hyper-planes in the subspace. Thus, we can determine the new separating hyper-planes during considering the all separating hyper-planes. Using multi-class benchmark data sets, we evaluate the effectiveness of the proposed methods over the conventional method.
机译:在本文中,为了提高多类支持向量机的泛化能力,我们提出了(1)一种新颖的模型选择和(2)支持向量机的特征提取。在(1)中,与多类SVM中的常规模型选择不同,我们分别为每个分离的超平面确定超参数,即内核参数和边距参数。即,对于每个分离的超平面,我们估计泛化能力并分别选择超参数的最佳值。在(2)中,我们定义通过训练多类支持向量机确定的决策函数的加权向量作为子空间的基础向量,并确定子空间中分离的超平面。因此,我们可以在考虑所有分离的超平面的同时确定新的分离的超平面。使用多类基准数据集,我们评估了所提出方法相对于常规方法的有效性。

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