Improved Coresets for Kernel Density Estimates
October 11, 2017 ยท Declared Dead ยท ๐ ACM-SIAM Symposium on Discrete Algorithms
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Authors
Jeff M. Phillips, Wai Ming Tai
arXiv ID
1710.04325
Category
cs.LG: Machine Learning
Cross-listed
cs.CG,
stat.ML
Citations
43
Venue
ACM-SIAM Symposium on Discrete Algorithms
Last Checked
3 months ago
Abstract
We study the construction of coresets for kernel density estimates. That is we show how to approximate the kernel density estimate described by a large point set with another kernel density estimate with a much smaller point set. For characteristic kernels (including Gaussian and Laplace kernels), our approximation preserves the $L_\infty$ error between kernel density estimates within error $ฮต$, with coreset size $2/ฮต^2$, but no other aspects of the data, including the dimension, the diameter of the point set, or the bandwidth of the kernel common to other approximations. When the dimension is unrestricted, we show this bound is tight for these kernels as well as a much broader set. This work provides a careful analysis of the iterative Frank-Wolfe algorithm adapted to this context, an algorithm called \emph{kernel herding}. This analysis unites a broad line of work that spans statistics, machine learning, and geometry. When the dimension $d$ is constant, we demonstrate much tighter bounds on the size of the coreset specifically for Gaussian kernels, showing that it is bounded by the size of the coreset for axis-aligned rectangles. Currently the best known constructive bound is $O(\frac{1}ฮต \log^d \frac{1}ฮต)$, and non-constructively, this can be improved by $\sqrt{\log \frac{1}ฮต}$. This improves the best constant dimension bounds polynomially for $d \geq 3$.
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