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An Efficient Implementation of Riemannian Manifold Hamiltonian Monte Carlo for Gaussian Process Models

28 October 2018
Ulrich Paquet
Marco Fraccaro
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Abstract

This technical report presents pseudo-code for a Riemannian manifold Hamiltonian Monte Carlo (RMHMC) method to efficiently simulate samples from NNN-dimensional posterior distributions p(x∣y)p(x|y)p(x∣y), where x∈RNx \in R^Nx∈RN is drawn from a Gaussian Process (GP) prior, and observations yny_nyn​ are independent given xnx_nxn​. Sufficient technical and algorithmic details are provided for the implementation of RMHMC for distributions arising from GP priors.

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