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The GaussianSketch for Almost Relative Error Kernel Distance

9 November 2018
J. M. Phillips
W. Tai
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Abstract

We introduce two versions of a new sketch for approximately embedding the Gaussian kernel into Euclidean inner product space. These work by truncating infinite expansions of the Gaussian kernel, and carefully invoking the RecursiveTensorSketch [Ahle et al. SODA 2020]. After providing concentration and approximation properties of these sketches, we use them to approximate the kernel distance between points sets. These sketches yield almost (1+ε)(1+\varepsilon)(1+ε)-relative error, but with a small additive α\alphaα term. In the first variants the dependence on 1/α1/\alpha1/α is poly-logarithmic, but has higher degree of polynomial dependence on the original dimension ddd. In the second variant, the dependence on 1/α1/\alpha1/α is still poly-logarithmic, but the dependence on ddd is linear.

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