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title abstract layout series publisher issn id month tex_title firstpage lastpage page order cycles bibtex_author author date address container-title volume genre issued pdf extras
Matérn Gaussian Processes on Graphs
Gaussian processes are a versatile framework for learning unknown functions in a manner that permits one to utilize prior information about their properties. Although many different Gaussian process models are readily available when the input space is Euclidean, the choice is much more limited for Gaussian processes whose input space is an undirected graph. In this work, we leverage the stochastic partial differential equation characterization of Matérn Gaussian processes—a widely-used model class in the Euclidean setting—to study their analog for undirected graphs. We show that the resulting Gaussian processes inherit various attractive properties of their Euclidean and Riemannian analogs and provide techniques that allow them to be trained using standard methods, such as inducing points. This enables graph Matérn Gaussian processes to be employed in mini-batch and non-conjugate settings, thereby making them more accessible to practitioners and easier to deploy within larger learning frameworks.
inproceedings
Proceedings of Machine Learning Research
PMLR
2640-3498
borovitskiy21a
0
Mat{é}rn Gaussian Processes on Graphs
2593
2601
2593-2601
2593
false
Borovitskiy, Viacheslav and Azangulov, Iskander and Terenin, Alexander and Mostowsky, Peter and Deisenroth, Marc and Durrande, Nicolas
given family
Viacheslav
Borovitskiy
given family
Iskander
Azangulov
given family
Alexander
Terenin
given family
Peter
Mostowsky
given family
Marc
Deisenroth
given family
Nicolas
Durrande
2021-03-18
Proceedings of The 24th International Conference on Artificial Intelligence and Statistics
130
inproceedings
date-parts
2021
3
18