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arxiv: 1810.13258 · v2 · pith:LZ6K5T4Nnew · submitted 2018-10-31 · 📊 stat.ML · cs.DS· cs.LG

On Fast Leverage Score Sampling and Optimal Learning

classification 📊 stat.ML cs.DScs.LG
keywords leveragesamplingscoreapproximationscontributionkernellearningmatrices
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Leverage score sampling provides an appealing way to perform approximate computations for large matrices. Indeed, it allows to derive faithful approximations with a complexity adapted to the problem at hand. Yet, performing leverage scores sampling is a challenge in its own right requiring further approximations. In this paper, we study the problem of leverage score sampling for positive definite matrices defined by a kernel. Our contribution is twofold. First we provide a novel algorithm for leverage score sampling and second, we exploit the proposed method in statistical learning by deriving a novel solver for kernel ridge regression. Our main technical contribution is showing that the proposed algorithms are currently the most efficient and accurate for these problems.

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