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Probabilistic Numerical Analysis in Riemannian Statistics

International Conference on Artificial Intelligence and Statistics (AISTATS), 2013
Abstract

We propose a probabilistic algorithm for the solution of both boundary and initial value problems that returns a joint Gaussian process posterior over the solution. Our motivation emanates from statistics on Riemannian manifolds, where non-analytic ordinary differential equations are involved in virtually all computations. The probabilistic formulation permits marginalising the uncertainty of the numerical solution such that statistics are less sensitive to inaccuracies. This leads to new Riemannian algorithms for mean value computations and principal geodesic analysis. Marginalisation also means results can be less precise than point estimates, enabling a noticeable speed-up over the state of the art. Our approach is an argument for a wider point that uncertainty caused by numerical calculations should be tracked throughout the pipeline of machine learning algorithms.

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