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首页> 外文期刊>Egyptian Informatics Journal >Support Vector Machines (SVMs) versus Multilayer Perception (MLP) in data classification
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Support Vector Machines (SVMs) versus Multilayer Perception (MLP) in data classification

机译:支持向量机(SVM)与多层感知(MLP)的数据分类

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In this paper, we introduce a new kernel function for improving the accuracy of the Support Vector Machines (SVMs) classification. The proposed kernel function is stated in general form and is called Gaussian Radial Basis Polynomials Function (GRPF) that combines both Gaussian Radial Basis Function (RBF) and Polynomial (POLY) kernels. We implement the proposed kernel with a number of parameters associated with the use of the SVM algorithm that can impact the results. A comparative analysis of SVMs versus the Multilayer Perception (MLP) for data classifications is also presented to verify the effectiveness of the proposed kernel function. We seek an answer to the question: “which kernel can achieve a high accuracy classification versus multi-layer neural networks”. The support vector machines are evaluated in comparisons with different kernel functions and multi-layer neural networks by application to a variety of non-separable data sets with several attributes. It is shown that the proposed kernel gives good classification accuracy in nearly all the data sets, especially those of high dimensions. The use of the proposed kernel results in a better, performance than those with existing kernels.
机译:在本文中,我们介绍了一种新的内核函数,用于提高支持向量机(SVM)分类的准确性。拟议的内核函数以一般形式表示,称为高斯径向基多项式函数(GRPF),它结合了高斯径向基函数(RBF)和多项式(POLY)内核。我们使用与可能影响结果的SVM算法相关联的许多参数来实现建议的内核。还对SVM与多层感知(MLP)进行了数据分类的比较分析,以验证所提出的内核功能的有效性。我们寻求以下问题的答案:“与多层神经网络相比,哪个内核可以实现高精度分类”。通过将其应用于具有多个属性的各种不可分离的数据集,可以与不同的内核功能和多层神经网络进行比较,从而评估支持向量机。结果表明,所提出的内核在几乎所有数据集中都具有良好的分类精度,尤其是那些高维数据集。与使用现有内核的内核相比,使用建议的内核可获得更好的性能。

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