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Vector-valued Gaussian Processes on Riemannian Manifolds via Gauge Independent Projected Kernels (2110.14423v4)

Published 27 Oct 2021 in stat.ML and cs.LG

Abstract: Gaussian processes are machine learning models capable of learning unknown functions in a way that represents uncertainty, thereby facilitating construction of optimal decision-making systems. Motivated by a desire to deploy Gaussian processes in novel areas of science, a rapidly-growing line of research has focused on constructively extending these models to handle non-Euclidean domains, including Riemannian manifolds, such as spheres and tori. We propose techniques that generalize this class to model vector fields on Riemannian manifolds, which are important in a number of application areas in the physical sciences. To do so, we present a general recipe for constructing gauge independent kernels, which induce Gaussian vector fields, i.e. vector-valued Gaussian processes coherent with geometry, from scalar-valued Riemannian kernels. We extend standard Gaussian process training methods, such as variational inference, to this setting. This enables vector-valued Gaussian processes on Riemannian manifolds to be trained using standard methods and makes them accessible to machine learning practitioners.

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Authors (6)
  1. Michael Hutchinson (12 papers)
  2. Alexander Terenin (34 papers)
  3. Viacheslav Borovitskiy (21 papers)
  4. So Takao (19 papers)
  5. Yee Whye Teh (162 papers)
  6. Marc Peter Deisenroth (73 papers)
Citations (19)

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