Generalized Legendre Polynomials for Support Vector Machines (SVMS) Classification

Ashraf Afifi, E. A. Zanaty
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引用次数: 2

Abstract

In this paper, we introduce a set of new kernel functions derived from the generalized Legendre polynomials to obtain more robust and higher support vector machine (SVM) classification accuracy. The generalized Legendre kernel functions are suggested to provide a value of how two given vectors are like each other by changing the inner product of these two vectors into a greater dimensional space. The proposed kernel functions satisfy the Mercer’s condition and orthogonality properties for reaching the optimal result with low number support vector (SV). For that, the new set of Legendre kernel functions could be utilized in classification applications as effective substitutes to those generally used like Gaussian, Polynomial and Wavelet kernel functions. The suggested kernel functions are calculated in compared to the current kernels such as Gaussian, Polynomial, Wavelets and Chebyshev kernels by application to various non-separable data sets with some attributes. It is seen that the suggested kernel functions could give competitive classification outcomes in comparison with other kernel functions. Thus, on the basis test outcomes, we show that the suggested kernel functions are more robust about the kernel parameter change and reach the minimal SV number for classification generally.
支持向量机(svm)分类的广义Legendre多项式
本文引入了一组由广义Legendre多项式衍生而来的新核函数,以获得更鲁棒和更高的支持向量机(SVM)分类精度。提出了广义勒让德核函数,通过将两个给定向量的内积变换到更大的维度空间中,来提供两个给定向量如何彼此相似的值。所提出的核函数满足Mercer条件和正交性,可以在少量支持向量(SV)下达到最优结果。因此,新的Legendre核函数集可以作为高斯核函数、多项式核函数和小波核函数等常用核函数的有效替代品,用于分类应用。将所提出的核函数应用于具有某些属性的各种不可分数据集,并与现有的高斯核、多项式核、小波核和切比雪夫核等核函数进行了比较。与其他核函数相比,所建议的核函数可以给出有竞争力的分类结果。因此,在测试结果的基础上,我们表明所建议的核函数对核参数变化具有更强的鲁棒性,并且通常达到最小的SV数用于分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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