Sigmoid多项式幂支持向量机的核学习

S. Fernandes, A. Pilastri, Luís A. M. Pereira, R. G. Pires, J. Papa
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引用次数: 4

摘要

在模式识别研究领域,支持向量机(SVM)是一种有效的分类工具,已被广泛应用。利用核函数将支持向量机的输入数据转换为更容易发生线性分离的高维空间。然而,支持向量机存在一些计算缺陷。其中之一是考虑到每个非线性可分的输入数据空间,为核映射找到更合适的参数所需要的计算量,这反映了支持向量机的性能。本文介绍了用于支持向量机核映射的多项式幂函数,并在实际数据集和合成数据集上展示了它们相对于已知核函数的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Kernels for Support Vector Machines with Polynomial Powers of Sigmoid
In the pattern recognition research field, Support Vector Machines (SVM) have been an effectiveness tool for classification purposes, being successively employed in many applications. The SVM input data is transformed into a high dimensional space using some kernel functions where linear separation is more likely. However, there are some computational drawbacks associated to SVM. One of them is the computational burden required to find out the more adequate parameters for the kernel mapping considering each non-linearly separable input data space, which reflects the performance of SVM. This paper introduces the Polynomial-Powers of Sigmoid for SVM kernel mapping, and it shows their advantages over well-known kernel functions using real and synthetic datasets.
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