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Robust and Conjugate Gaussian Process Regression

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To enable closed form conditioning, a common assumption in Gaussian process (GP) regression is independent and identically distributed Gaussian observation noise. This strong and simplistic assumption is often violated in practice, which leads to unreliable inferences and uncertainty quantification. Unfortunately, existing methods for robustifying GPs break closed-form conditioning, which makes them less attractive to practitioners and significantly more computationally expensive. In this paper, we demonstrate how to perform provably robust and conjugate Gaussian process (RCGP) regression at virtually no additional cost using generalised Bayesian inference. RCGP is particularly versatile as it enables exact conjugate closed form updates in all settings where standard GPs admit them. To demonstrate its strong empirical performance, we deploy RCGP for problems ranging from Bayesian optimisation to sparse variational Gaussian processes.

Matias Altamirano, Fran\c{c}ois-Xavier Briol, Jeremias Knoblauch• 2023

Related benchmarks

TaskDatasetResultRank
Predictive Density EstimationCA Housing Constant noise, 15% Corruptions
Negative Log Predictive Density3.57
6
Predictive Density EstimationCA Housing Student-t noise, 15% Corruptions
Neg Log Pred Density1.77
6
Predictive Density EstimationCA Housing Laplace noise, 15% Corruptions
Negative Log Predictive Density1.61
6
Predictive Density EstimationFriedman 5 Uniform noise 15% Corruptions
Neg Log Pred Density0.467
6
Predictive Density EstimationFriedman 5 Constant noise, 15% Corruptions
Neg Log Pred Density0.824
6
Predictive Density EstimationFriedman 5 Student-t noise 15% Corruptions
NLL (Predictive Density)0.0178
6
Predictive Density EstimationFriedman 5 Laplace noise, 15% Corruptions
Negative Log Predictive Density0.347
6
Predictive Density EstimationFriedman 10 Uniform noise 15% Corruptions
NLL0.0678
6
Predictive Density EstimationFriedman 10 Constant noise 15% Corruptions
Neg Log Pred Density0.885
6
Predictive Density EstimationFriedman 10 Student-t noise 15% Corruptions
Neg Log Pred Density-0.068
6
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