Sparse Gaussian Process Hyperparameters: Optimize or Integrate?
November 04, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Vidhi Lalchand, Wessel P. Bruinsma, David R. Burt, Carl E. Rasmussen
arXiv ID
2211.02476
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.LG,
stat.ME
Citations
8
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
The kernel function and its hyperparameters are the central model selection choice in a Gaussian proces (Rasmussen and Williams, 2006). Typically, the hyperparameters of the kernel are chosen by maximising the marginal likelihood, an approach known as Type-II maximum likelihood (ML-II). However, ML-II does not account for hyperparameter uncertainty, and it is well-known that this can lead to severely biased estimates and an underestimation of predictive uncertainty. While there are several works which employ a fully Bayesian characterisation of GPs, relatively few propose such approaches for the sparse GPs paradigm. In this work we propose an algorithm for sparse Gaussian process regression which leverages MCMC to sample from the hyperparameter posterior within the variational inducing point framework of Titsias (2009). This work is closely related to Hensman et al. (2015b) but side-steps the need to sample the inducing points, thereby significantly improving sampling efficiency in the Gaussian likelihood case. We compare this scheme against natural baselines in literature along with stochastic variational GPs (SVGPs) along with an extensive computational analysis.
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