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On the V_ gamma Dimension for Regression in Reproducing Kernel Hilbert Spaces

机译:在再生中复制核心Hilbert空间中的V_Gamma维度

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This paper presents a computation of the V_ gamma dimension for regression in bounded subspaces of Reproducing Kernel Hilbert Spaces (RKHS) for the Support Vector Machine (SVM) regression epsilon -insensitive loss function L_ epsilon , and general L_p loss functions. Finiteness of the V_ gamma dimension is shown, which also proves uniform convergence in probability for regression machines in RKHS subspaces that use the L epsilon or general L_p loss function.s This paper presents a novel proof of this result. It also presents a computation of an upper bound of the V_ gamma dimension under some conditions, that leads to an approach for the estiamtion of the empirical V_ gamma dimension given a set of training data.
机译:本文介绍了在再现内核Hilbert空格(RKHS)的有界子空间中的v_Gamma维度的计算,用于支持向量机(SVM)回归epsilon-ensive丢失函数L_ epsilon和通用L_P损耗函数。显示了V_GAMMA尺寸的有限度,这也证明了使用L ePsilon或通用L_P损耗功能的RKHS子空间中回归机器概率均匀的收敛性。本文提出了一种新颖的这一结果证明。它还呈现了在某些条件下的V_ Gamma维度的上限的计算,这导致了对经验v_Gamma维度的estiamtion给定的一组训练数据的方法。

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