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Multi-scale Nystrom Method

机译:多尺度纽约法

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摘要

Kernel methods are powerful tools for modeling nonlinear data. However, the amount of computation and memory required for kernel methods becomes the bottleneck when dealing with large-scale problems. In this paper, we propose Nested Nystrom Method (NNM) which achieves a delicate balance between the approximation accuracy and computational efficiency by exploiting the multilayer structure and multiple compressions. Even when the size of the kernel matrix is very large, NNM consistently decomposes very small matrices to update the eigen-decomposition of the kernel matrix. We theoretically show that NNM implicitly updates the principal subspace through the multiple layers, and also prove that its corresponding errors of rank-k PSD matrix approximation and kernel PCA (KPCA) are decreased by using additional sublayers before the final layer. Finally, we empirically demonstrate the decreasing property of errors of NNM with the additional sublayers through the experiments on the constructed kernel matrices of real data sets, and show that NNM effectively controls the efficiency both for rank-k PSD matrix approximation and KPCA.
机译:内核方法是用于建模非线性数据的强大工具。但是,在处理大规模问题时,内核方法所需的计算和存储器的量成为瓶颈。在本文中,我们提出了嵌套的纽约法方法(NNM),通过利用多层结构和多个压缩来实现近似精度和计算效率之间的微妙平衡。即使当核矩阵的大小非常大时,NNM也一致地分解非常小的矩阵以更新核矩阵的特征分解。理论上,我们通过多层隐式更新主子空间,并证明其通过在最终层之前使用附加子层来减少其对应的Rank-K PSD矩阵近似和内核PCA(KPCA)的相应误差。最后,我们通过对真实数据集的构建内核矩阵的实验证明了与附加子层的额外子层的误差误差的性能下降,并表明NNM有效地控制了Rank-K PSD矩阵近似和KPCA的效率。

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