Kernel Interpolation for Scalable Structured Gaussian Processes (KISS-GP)

March 03, 2015 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning

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Authors Andrew Gordon Wilson, Hannes Nickisch arXiv ID 1503.01057 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 546 Venue International Conference on Machine Learning Last Checked 3 months ago
Abstract
We introduce a new structured kernel interpolation (SKI) framework, which generalises and unifies inducing point methods for scalable Gaussian processes (GPs). SKI methods produce kernel approximations for fast computations through kernel interpolation. The SKI framework clarifies how the quality of an inducing point approach depends on the number of inducing (aka interpolation) points, interpolation strategy, and GP covariance kernel. SKI also provides a mechanism to create new scalable kernel methods, through choosing different kernel interpolation strategies. Using SKI, with local cubic kernel interpolation, we introduce KISS-GP, which is 1) more scalable than inducing point alternatives, 2) naturally enables Kronecker and Toeplitz algebra for substantial additional gains in scalability, without requiring any grid data, and 3) can be used for fast and expressive kernel learning. KISS-GP costs O(n) time and storage for GP inference. We evaluate KISS-GP for kernel matrix approximation, kernel learning, and natural sound modelling.
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