Stationary Kernels and Gaussian Processes on Lie Groups and their Homogeneous Spaces I: the compact case
This work addresses the need for invariant spatiotemporal models in fields like physical sciences and engineering, though it appears incremental as it extends existing Gaussian process methods to non-Euclidean settings.
The authors tackled the problem of building stationary Gaussian processes on non-Euclidean spaces with symmetries, developing practical techniques for calculating covariance kernels and sampling from prior and posterior processes, making these models compatible with standard computational tools.
Gaussian processes are arguably the most important class of spatiotemporal models within machine learning. They encode prior information about the modeled function and can be used for exact or approximate Bayesian learning. In many applications, particularly in physical sciences and engineering, but also in areas such as geostatistics and neuroscience, invariance to symmetries is one of the most fundamental forms of prior information one can consider. The invariance of a Gaussian process' covariance to such symmetries gives rise to the most natural generalization of the concept of stationarity to such spaces. In this work, we develop constructive and practical techniques for building stationary Gaussian processes on a very large class of non-Euclidean spaces arising in the context of symmetries. Our techniques make it possible to (i) calculate covariance kernels and (ii) sample from prior and posterior Gaussian processes defined on such spaces, both in a practical manner. This work is split into two parts, each involving different technical considerations: part I studies compact spaces, while part II studies non-compact spaces possessing certain structure. Our contributions make the non-Euclidean Gaussian process models we study compatible with well-understood computational techniques available in standard Gaussian process software packages, thereby making them accessible to practitioners.