A New Smooth Support Vector Machine

In this paper, a new method that three-power spline function is used to smoothen the model of support vector machine (SVM) is presented. A third-order spline smooth support vector machine(TSSSVM) is obtained. Moreover, by analyzing the function precision, TSSSVM is better than SSVM and PSSVM.

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