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A novel support vector machine algorithm for solving nonlinear regression problems based on symmetrical points

机译:基于对称点的非线性回归问题支持向量机算法

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A novel support vector machine (SVM) algorithm for regression problems is proposed in this paper. Each pattern in the original training set is converted into a pair of patterns, which are labeled by 1 and -1, respectively. Therefore, the regression problem can be considered as a classification problem. By optimizing the obtained decision function, the model output of unknown samples can be estimated. Experimental results show the proposed method works well, and in many cases it produces less support vectors than the normal support vector regression (SVR) machine.
机译:提出了一种新的回归问题支持向量机算法。原始训练集中的每个模式都转换为一对模式,分别用1和-1标记。因此,回归问题可以视为分类问题。通过优化获得的决策函数,可以估计未知样本的模型输出。实验结果表明,所提出的方法效果很好,并且在许多情况下,它产生的支持向量少于常规支持向量回归(SVR)机器。

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