arXiv Analytics

Sign in

arXiv:2108.11683 [stat.ML]AbstractReferencesReviewsResources

Estimation of Riemannian distances between covariance operators and Gaussian processes

Ha Quang Minh

Published 2021-08-26Version 1

In this work we study two Riemannian distances between infinite-dimensional positive definite Hilbert-Schmidt operators, namely affine-invariant Riemannian and Log-Hilbert-Schmidt distances, in the context of covariance operators associated with functional stochastic processes, in particular Gaussian processes. Our first main results show that both distances converge in the Hilbert-Schmidt norm. Using concentration results for Hilbert space-valued random variables, we then show that both distances can be consistently and efficiently estimated from (i) sample covariance operators, (ii) finite, normalized covariance matrices, and (iii) finite samples generated by the given processes, all with dimension-independent convergence. Our theoretical analysis exploits extensively the methodology of reproducing kernel Hilbert space (RKHS) covariance and cross-covariance operators. The theoretical formulation is illustrated with numerical experiments on covariance operators of Gaussian processes.

Related articles: Most relevant | Search more
arXiv:1502.02860 [stat.ML] (Published 2015-02-10)
Gaussian Processes for Data-Efficient Learning in Robotics and Control
arXiv:1906.03260 [stat.ML] (Published 2019-06-04)
Reliable training and estimation of variance networks
arXiv:1805.08463 [stat.ML] (Published 2018-05-22)
Variational Learning on Aggregate Outputs with Gaussian Processes