首页> 外文会议>Annual Conference on Learning Theory(COLT 2006); 20060622-25; Pittsburgh,PA(US) >Learning Bounds for Support Vector Machines with Learned Kernels
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Learning Bounds for Support Vector Machines with Learned Kernels

机译:具有学习核的支持向量机的学习范围

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摘要

Consider the problem of learning a kernel for use in SVM classification. We bound the estimation error of a large margin classifier when the kernel, relative to which this margin is defined, is chosen from a family of kernels based on the training sample. For a kernel family with pseudodimension d_φ, we present a bound of (O (d_φ + 1/γ~2))~(1/2) on the estimation error for SVMs with margin γ. This is the first bound in which the relation between the margin term and the family-of-kernels term is additive rather then multiplicative. The pseudodimension of families of linear combinations of base kernels is the number of base kernels. Unlike in previous (multiplicative) bounds, there is no non-negativity requirement on the coefficients of the linear combinations. We also give simple bounds on the pseudodimension for families of Gaussian kernels.
机译:考虑学习用于SVM分类的内核的问题。当根据训练样本从一系列内核中选择相对于其定义了裕度的内核时,我们限制了一个大裕度分类器的估计误差。对于具有伪维数d_φ的内核族,对于具有余量γ的SVM,我们提出了(O(d_φ+ 1 /γ〜2)/ n)〜(1/2)的边界。这是保证金项与内核家族项之间的关系是加法而不是乘法的第一个界限。基本内核线性组合的族的伪维数是基本内核的数量。与以前的(乘法)边界不同,线性组合的系数没有非负性要求。我们还给出了高斯核族伪尺寸的简单界限。

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