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Support vector machine model with discriminant graph regularization term

机译:具有判别图正则项的支持向量机模型

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Traditional SVM classification model constructs linear discriminant function by maximizing the margin between two classes, and the weight vector of the discriminant function is only related to a small number of support vectors near the decision boundary. The small amount of support vectors is hard to describe the global distributive information when the distributions of the samples are nonlinear manifolds structure. To solve this problem, the graph regularization term with discrimination information is introduced into the objective function of SVM model. Experimental results on public data sets show that the classification accuracy of this method has improved significantly compared to traditional SVM models.
机译:传统的SVM分类模型通过最大化两个类别之间的余量来构造线性判别函数,而判别函数的权向量仅与决策边界附近的少量支持向量有关。当样本的分布是非线性流形结构时,少量的支持向量很难描述全局分布信息。为了解决这个问题,将带有判别信息的图正则化项引入到SVM模型的目标函数中。在公共数据集上的实验结果表明,与传统的SVM模型相比,该方法的分类准确性已显着提高。

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