Coordinates transformation and polynomial chaos for the Bayesian Inference of a Gaussian process with parameterized prior covariance function

by I. Sraj, O. Le Maitre, O. Knio, I. Hoteit
Year: 2016

Bibliography

Coordinates transformation and polynomial chaos for the Bayesian Inference of a Gaussian process with parameterized prior covariance function
I. Sraj, O. Le Maitre, O. Knio, and I. Hoteit
Computer Methods in Applied Mathematics and Engineering, 298, 205-228, 2016

Abstract

​This paper addresses model dimensionality reduction for Bayesian inference based on prior Gaussian fields with uncertainty in the covariance function hyper-parameters. The dimensionality reduction is traditionally achieved using the Karhunen-Loève expansion of a prior Gaussian process assuming covariance function with fixed hyper-parameters, despite the fact that these are uncertain in nature. The posterior distribution of the Karhunen-Loève coordinates is then inferred using available observations. The resulting inferred field is therefore dependent on the assumed hyper-parameters. Here, we seek to efficiently estimate both the field and covariance hyper-parameters using Bayesian inference. To this end, a generalized Karhunen-Loève expansion is derived using a coordinate transformation to account for the dependence with respect to the covariance hyper-parameters. Polynomial Chaos expansions are employed for the acceleration of the Bayesian inference using similar coordinate transformations, enabling us to avoid expanding explicitly the solution dependence on the uncertain hyper-parameters. We demonstrate the feasibility of the proposed method on a transient diffusion equation by inferring spatially-varying log-diffusivity fields from noisy data. The inferred profiles were found closer to the true profiles when including the hyper-parameters' uncertainty in the inference formulation.

DOI: 10.1016/j.cma.2015.10.002

Keywords

Bayesian Inference Dimensionality Reduction Karhunen-Loève Expansion Markov Chain Monte Carlo