AutoGP: Exploring the capabilities and limitations of Gaussian process models

Krauth, Karl; Bonilla, Edwin V; Cutajar, Kurt; Filippone, Maurizio
UAI 2017, Conference on Uncertainty in Artificial Intelligence, August 11-15, 2017, Sydney, Australia

We investigate the capabilities and limitations of Gaussian process models by jointly exploring three complementary directions: (i) scalable and statistically efficient inference; (ii) flexible kernels; and (iii) objective functions for hyperparameter learning alternative to the marginal likelihood. Our approach outperforms all previously reported gp methods on the standard mnist dataset; achieves state-of-the-art performance in a task particularly hard for kernel-based methods using the rectangles-image dataset; and breaks the 1% error-rate barrier in gp models using the mnist8m dataset, showing along the way the scalability of our method at unprecedented scale for gp models (8 million observations) in classification problems. Overall, our approach represents a significant breakthrough in kernel methods and gp models, bridging the gap between deep learning approaches and kernel machines.


Type:
Conférence
City:
Sydney
Date:
2017-08-11
Department:
Data Science
Eurecom Ref:
5038
Copyright:
© EURECOM. Personal use of this material is permitted. The definitive version of this paper was published in UAI 2017, Conference on Uncertainty in Artificial Intelligence, August 11-15, 2017, Sydney, Australia and is available at :
See also:

PERMALINK : https://www.eurecom.fr/publication/5038