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Quadrature-based features for kernel approximation

2018-02-11ICLR 2018Code Available0· sign in to hype

Marina Munkhoeva, Yermek Kapushev, Evgeny Burnaev, Ivan Oseledets

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Abstract

We consider the problem of improving kernel approximation via randomized feature maps. These maps arise as Monte Carlo approximation to integral representations of kernel functions and scale up kernel methods for larger datasets. Based on an efficient numerical integration technique, we propose a unifying approach that reinterprets the previous random features methods and extends to better estimates of the kernel approximation. We derive the convergence behaviour and conduct an extensive empirical study that supports our hypothesis.

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