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Practical Hilbert space approximate Bayesian Gaussian processes for probabilistic programming

Gabriel Riutort‐Mayol, Paul‐Christian Bürkner, Michael Riis Andersen, Arno Solin, Aki Vehtari

2022Statistics and Computing52 citationsDOIOpen Access PDF

Abstract

Abstract Gaussian processes are powerful non-parametric probabilistic models for stochastic functions. However, the direct implementation entails a complexity that is computationally intractable when the number of observations is large, especially when estimated with fully Bayesian methods such as Markov chain Monte Carlo. In this paper, we focus on a low-rank approximate Bayesian Gaussian processes, based on a basis function approximation via Laplace eigenfunctions for stationary covariance functions. The main contribution of this paper is a detailed analysis of the performance, and practical recommendations for how to select the number of basis functions and the boundary factor. Intuitive visualizations and recommendations, make it easier for users to improve approximation accuracy and computational performance. We also propose diagnostics for checking that the number of basis functions and the boundary factor are adequate given the data. The approach is simple and exhibits an attractive computational complexity due to its linear structure, and it is easy to implement in probabilistic programming frameworks. Several illustrative examples of the performance and applicability of the method in the probabilistic programming language Stan are presented together with the underlying Stan model code.

Topics & Concepts

Probabilistic logicHilbert spaceBayesian probabilityGaussianMathematicsRigged Hilbert spaceComputer scienceGaussian processSpace (punctuation)Reproducing kernel Hilbert spaceArtificial intelligenceApplied mathematicsMathematical optimizationAlgorithmTheoretical computer sciencePure mathematicsPhysicsOperating systemQuantum mechanicsGaussian Processes and Bayesian InferenceControl Systems and IdentificationAdvanced Multi-Objective Optimization Algorithms
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