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Graph Random Features for Scalable Gaussian Processes

Main:9 Pages
13 Figures
Bibliography:2 Pages
7 Tables
Appendix:12 Pages
Abstract

We study the application of graph random features (GRFs) - a recently introduced stochastic estimator of graph node kernels - to scalable Gaussian processes on discrete input spaces. We prove that (under mild assumptions) Bayesian inference with GRFs enjoys O(N3/2)O(N^{3/2}) time complexity with respect to the number of nodes NN, compared to O(N3)O(N^3) for exact kernels. Substantial wall-clock speedups and memory savings unlock Bayesian optimisation on graphs with over 10610^6 nodes on a single computer chip, whilst preserving competitive performance.

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