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Combined Kernel SVM and Its Application on Network Security Risk Evaluation

机译:组合内核SVM及其对网络安全风险评估的应用

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Support Vector Machine SVM is a branch of Artificial Intelligence. SVM has many advantages in solving small sample size, nonlinear and high dimensional pattern recognition problem. Kernel function is the key technology of SVM, the choice of Kernel function will affect the learning ability and generalization ability of SVM, and different kernel function will construct different SVMS. At present, there are two types of kernel function, local kernel function which has better learning ability and whole kernel function which has better extensive ability. Since every traditional kernel function has its advantages and disadvantages, this paper analyze the principle of traditional kernel function and adopt a new kernel function of combined two kernel function, which called combined kernel function. It has better generalization ability and better learning ability, and adopt the combined kernel SVM into network security risk evaluation, compared with the SVM using traditional kernel. The result shows that the SVM based on combined kernels advance the speed of classification and has better classification precision than that with traditional kernels. The superiority and validity of this method is approved through experiment.
机译:支持向量机SVM是人工智能的分支。 SVM在解决小样本大小,非线性和高维模式识别问题方面具有许多优点。内核功能是SVM的关键技术,选择内核功能将影响SVM的学习能力和泛化能力,而不同的内核功能将构建不同的SVM。目前,有两种类型的内核函数,本地内核功能,具有更好的学习能力和全内核功能,具有更好的广泛能力。由于每个传统的内核功能都有其优缺点,本文分析了传统内核函数的原理,采用了组合两个内核函数的新内核功能,称为内核功能。与使用传统内核的SVM相比,它具有更好的泛化能力和更好的学习能力,并采用组合的内核SVM进入网络安全风险评估。结果表明,基于组合核的SVM推进分类的速度,并且具有比传统核的更好的分类精度。通过实验批准该方法的优越性和有效性。

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