基于经验误差的SVM核优化:在数字图像识别中的应用

N. Ayat, M. Cheriet, C. Suen
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引用次数: 21

摘要

我们解决了支持向量机建模中优化核参数的问题,特别是当参数数量大于1时,如多项式核和KMOD(我们新引入的核)。目前的工作是对Chapelle等人(2001)提出的框架的扩展实验研究,该框架使用误差的解析上界来优化支持向量机核。然而,我们的优化方案使用准牛顿优化方法最小化经验误差估计。为了评估我们的方法,进一步将该方法用于在合成数据和NIST数据库上适配KMOD、RBF和多项式核。与简单的梯度下降法相比,该方法收敛速度快,结果令人满意。
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Empirical error based optimization of SVM kernels: application to digit image recognition
We address the problem of optimizing kernel parameters in support vector machine modeling, especially when the number of parameters is greater than one as in polynomial kernels and KMOD, our newly introduced kernel. The present work is an extended experimental study of the framework proposed by Chapelle et al. (2001) for optimizing SVM kernels using an analytic upper bound of the error. However our optimization scheme minimizes an empirical error estimate using a quasi-Newton optimization method. To assess our method, the approach is further used for adapting KMOD, RBF and polynomial kernels on synthetic data and NIST database. The method shows a much faster convergence with satisfactory results in comparison with the simple gradient descent method.
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