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Quadratic kernel-free non-linear support vector machine

机译:二次无核非线性支持向量机

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摘要

A new quadratic kernel-free non-linear support vector machine (which is called QSVM) is introduced. The SVM optimization problem can be stated as follows: Maximize the geometrical margin subject to all the training data with a functional margin greater than a constant. The functional margin is equal to W~TX+b which is the equation of the hyper-plane used for linear separation. The geometrical margin is equal 1/‖W‖. And the constant in this case is equal to one. To separate the data non-linearly, a dual optimization form and the Kernel trick must be used. In this paper, a quadratic decision function that is capable of separating non-linearly the data is used. The geometrical margin is proved to be equal to the inverse of the norm of the gradient of the decision function. The functional margin is the equation of the quadratic function. QSVM is proved to be put in a quadratic optimization setting. This setting does not require the use of a dual form or the use of the Kernel trick. Comparisons between the QSVM and the SVM using the Gaussian and the polynomial kernels on databases from the UCI repository are shown.
机译:介绍了一种新的二次无核非线性支持向量机(称为QSVM)。 SVM优化问题可以描述为:对所有训练数据进行几何裕量最大化,其功能裕量大于常数。功能裕度等于W〜TX + b,这是用于线性分离的超平面方程。几何裕度等于1 /“ W”。在这种情况下,常数等于1。要非线性分离数据,必须使用双重优化形式和内核技巧。在本文中,使用了能够非线性分离数据的二次决策函数。几何余量被证明等于决策函数的梯度范数的倒数。功能裕度是二次函数的方程。事实证明,QSVM被置于二次优化设置中。此设置不需要使用双重形式或使用内核技巧。展示了使用UCI存储库中的数据库使用高斯和多项式内核对QSVM和SVM进行的比较。

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