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Near-Optimal Coresets of Kernel Density Estimates

6 February 2018
J. M. Phillips
W. Tai
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Abstract

We construct near-optimal coresets for kernel density estimates for points in Rd\mathbb{R}^dRd when the kernel is positive definite. Specifically we show a polynomial time construction for a coreset of size O(d/ε⋅log⁡1/ε)O(\sqrt{d}/\varepsilon\cdot \sqrt{\log 1/\varepsilon} )O(d​/ε⋅log1/ε​), and we show a near-matching lower bound of size Ω(min⁡{d/ε,1/ε2})\Omega(\min\{\sqrt{d}/\varepsilon, 1/\varepsilon^2\})Ω(min{d​/ε,1/ε2}). When d≥1/ε2d\geq 1/\varepsilon^2d≥1/ε2, it is known that the size of coreset can be O(1/ε2)O(1/\varepsilon^2)O(1/ε2). The upper bound is a polynomial-in-(1/ε)(1/\varepsilon)(1/ε) improvement when d∈[3,1/ε2)d \in [3,1/\varepsilon^2)d∈[3,1/ε2) and the lower bound is the first known lower bound to depend on ddd for this problem. Moreover, the upper bound restriction that the kernel is positive definite is significant in that it applies to a wide-variety of kernels, specifically those most important for machine learning. This includes kernels for information distances and the sinc kernel which can be negative.

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