Comparing scale parameter estimators for Gaussian process regression: Cross validation and maximum likelihood

Naslidnyk, Masha; Kanagawa, Motonobu; Karvonen, Toni; Mahsereci, Maren
UQ 2024, SIAM Conference on Uncertainty Quantification (UQ24), 27 February-1 March 2024, Trieste, Italy

Gaussian process (GP) regression is a Bayesian nonparametric method for regression and interpolation, offering a principled way of quantifying the uncertainties of predicted function values. For the quantified uncertainties to be well-calibrated, however, the covariance kernel of the GP prior has to be carefully selected. In this work, we theoretically compare two methods for choosing the kernel in GP regression: cross-validation and maximum likelihood estimation. Focusing on the scale-parameter estimation of a Brownian motion kernel in the noiseless setting, we prove that cross-validation can yield asymptotically well-calibrated credible intervals for a broader class of ground-truth functions than maximum likelihood estimation, suggesting an advantage of the former over the latter.


Type:
Talk
City:
Trieste
Date:
2024-02-27
Department:
Data Science
Eurecom Ref:
7611
Copyright:
© EURECOM. Personal use of this material is permitted. The definitive version of this paper was published in UQ 2024, SIAM Conference on Uncertainty Quantification (UQ24), 27 February-1 March 2024, Trieste, Italy and is available at :
See also:

PERMALINK : https://www.eurecom.fr/publication/7611