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Scaling Gaussian Process Regression with Derivatives

2018-10-29NeurIPS 2018Code Available0· sign in to hype

David Eriksson, Kun Dong, Eric Hans Lee, David Bindel, Andrew Gordon Wilson

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Abstract

Gaussian processes (GPs) with derivatives are useful in many applications, including Bayesian optimization, implicit surface reconstruction, and terrain reconstruction. Fitting a GP to function values and derivatives at n points in d dimensions requires linear solves and log determinants with an n(d+1) n(d+1) positive definite matrix -- leading to prohibitive O(n^3d^3) computations for standard direct methods. We propose iterative solvers using fast O(nd) matrix-vector multiplications (MVMs), together with pivoted Cholesky preconditioning that cuts the iterations to convergence by several orders of magnitude, allowing for fast kernel learning and prediction. Our approaches, together with dimensionality reduction, enables Bayesian optimization with derivatives to scale to high-dimensional problems and large evaluation budgets.

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