ICLR2026

Graph Random Features for Scalable Gaussian Processes

Matthew Zhang, Jihao Andreas Lin, Krzysztof Marcin Choromanski, Adrian Weller, Richard E. Turner, Isaac Reid

被引用 4 次

摘要

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)\mathcal{O}(N^{3/2}) time complexity with respect to the number of nodes NN, with probabilistic accuracy guarantees. In contrast, exact kernels generally incur O(N3)\mathcal{O}(N^{3}). Wall-clock speedups and memory savings unlock Bayesian optimisation with over 1M graph nodes on a single computer chip, whilst preserving competitive performance.