首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Approximation beats concentration? An approximation view on inference with smooth radial kernels
【24h】

Approximation beats concentration? An approximation view on inference with smooth radial kernels

机译:近似节拍浓度?带有光滑径向核的推理的近似视图

获取原文
           

摘要

Positive definite kernels and their associated Reproducing Kernel Hilbert Spaces provide a mathematically compelling and practically competitive framework for learning from data. In this paper we take the approximation theory point of view to explore various aspects of smooth kernels related to their inferential properties. We analyze eigenvalue decay of kernels operators and matrices, properties of eigenfunctions/eigenvectors and “Fourier” coefficients of functions in the kernel space restricted to a discrete set of data points. We also investigate the fitting capacity of kernels, giving explicit bounds on the fat shattering dimension of the balls in Reproducing Kernel Hilbert spaces. Interestingly, the same properties that make kernels very effective approximators for functions in their “native” kernel space, also limit their capacity to represent arbitrary functions. We discuss various implications, including those for gradient descent type methods. It is important to note that most of our bounds are measure independent. Moreover, at least in moderate dimension, the bounds for eigenvalues are much tighter than the bounds which can be obtained from the usual matrix concentration results. For example, we see that eigenvalues of kernel matrices show nearly exponential decay with constants depending only on the kernel and the domain. We call this “approximation beats concentration” phenomenon as even when the data are sampled from a probability distribution, some of their aspects are better understood in terms of approximation theory.
机译:正定核及其关联的再生内核希尔伯特空间为从数据中学习提供了数学上引人入胜且实用的竞争框架。在本文中,我们从近似理论的观点出发,探索与光滑核的推论性质相关的各个方面。我们分析了内核运算符和矩阵的特征值衰减,特征函数/特征向量的特性以及限于离散数据集的内核空间中函数的“傅立叶”系数。我们还研究了内核的拟合能力,对重现内核希尔伯特空间中球的脂肪破碎维度给出了明确的界限。有趣的是,使内核成为其“本机”内核空间中的函数的有效逼近器的相同属性,也限制了它们表示任意函数的能力。我们讨论了各种含义,包括梯度下降类型方法的含义。重要的是要注意,我们的大多数界限都是独立于度量的。此外,至少在中等维度上,特征值的界限比从常规基质浓度结果中可获得的界限更紧密。例如,我们看到内核矩阵的特征值显示出几乎呈指数衰减,且常数仅取决于内核和域。我们称这种“逼近集中”现象是因为即使从概率分布中采样数据,也可以从逼近理论中更好地理解它们的某些方面。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号