Scalable Log Determinants for Gaussian Process Kernel Learning
Abstract
For applications as varied as Bayesian neural networks, determinantal point processes, elliptical graphical models, and kernel learning for Gaussian processes (GPs), one must compute a log determinant of an positive definite matrix, and its derivatives - leading to prohibitive computations. We propose novel approaches to estimating these quantities from only fast matrix vector multiplications (MVMs). These stochastic approximations are based on Chebyshev, Lanczos, and surrogate models, and converge quickly even for kernel matrices that have challenging spectra. We leverage these approximations to develop a scalable Gaussian process approach to kernel learning. We find that Lanczos is generally superior to Chebyshev for kernel learning, and that a surrogate approach can be highly efficient and accurate with popular kernels.
Cite
@article{arxiv.1711.03481,
title = {Scalable Log Determinants for Gaussian Process Kernel Learning},
author = {Kun Dong and David Eriksson and Hannes Nickisch and David Bindel and Andrew Gordon Wilson},
journal= {arXiv preprint arXiv:1711.03481},
year = {2017}
}
Comments
Appears at Advances in Neural Information Processing Systems 30 (NIPS), 2017