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Nystrom Approximation for Sparse Kernel Methods: Theoretical Analysis and Empirical Evaluation

机译:稀疏内核方法的Nystrom近似:理论分析和实证评价

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摘要

Nystrom approximation is an effective approach to accelerate the computation of kernel matrices in many kernel methods. In this paper, we consider the Nystrom approximation for sparse kernel methods. Instead of relying on the low-rank assumption of the original kernels, which sometimes does not hold in some applications, we take advantage of the restricted eigenvalue condition, which has been proved to be robust for sparse kernel methods. Based on the restricted eigenvalue condition, we have provided not only the approximation bound for the original kernel matrix but also the recovery bound for the sparse solutions of sparse kernel regression. In addition to the theoretical analysis, we also demonstrate the good performance of the Nystrom approximation for sparse kernel regression on real world data sets.
机译:Nystrom近似是一种有效的方法,可以在许多内核方法中加速内核矩阵的计算。在本文中,我们考虑稀疏内核方法的Nystrom近似。而不是依赖于原始内核的低级别假设,这有时不会在某些应用中保持,而是利用受限制的特征值条件,这被证明是对稀疏内核方法的强大。基于受限制的特征值条件,我们不仅提供了原始内核矩阵的近似界限,而且提供了稀疏内核回归稀疏解的稀疏解的恢复绑定。除了理论分析之外,我们还展示了Nystrom近似对真实世界数据集上的稀疏内核回归的良好表现。

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