Bayesian Model Calibration for Extrapolative Prediction via Gibbs Posteriors

09/12/2019
by   Spencer Woody, et al.
0

The current standard Bayesian approach to model calibration, which assigns a Gaussian process prior to the discrepancy term, often suffers from issues of unidentifiability and computational complexity and instability. When the goal is to quantify uncertainty in physical parameters for extrapolative prediction, then there is no need to perform inference on the discrepancy term. With this in mind, we introduce Gibbs posteriors as an alternative Bayesian method for model calibration, which updates the prior with a loss function connecting the data to the parameter. The target of inference is the physical parameter value which minimizes the expected loss. We propose to tune the loss scale of the Gibbs posterior to maintain nominal frequentist coverage under assumptions of the form of model discrepancy, and present a bootstrap implementation for approximating coverage rates. Our approach is highly modular, allowing an analyst to easily encode a wide variety of such assumptions. Furthermore, we provide a principled method of combining posteriors calculated from data subsets. We apply our methods to data from an experiment measuring the material properties of tantalum.

READ FULL TEXT

page 1

page 19

page 22

page 24

research
01/03/2018

A Comprehensive Bayesian Treatment of the Universal Kriging parameters with Matérn correlation kernels

The Gibbs reference posterior distribution provides an objective full-Ba...
research
06/10/2022

Bayesian calibration of coupled computational mechanics models under uncertainty based on interface deformation

Calibration or parameter identification is used with computational mecha...
research
01/03/2018

A Comprehensive Bayesian Treatment of the Universal Kriging model with Matérn correlation kernels

The Gibbs reference posterior distribution provides an objective full-Ba...
research
04/08/2020

Estimating Scale Discrepancy in Bayesian Model Calibration for ChemCam on the Mars Curiosity Rover

The Mars rover Curiosity carries an instrument called ChemCam to determi...
research
07/10/2018

A theoretical framework of the scaled Gaussian stochastic process in prediction and calibration

The Gaussian stochastic process (GaSP) is a useful technique for predict...
research
12/08/2020

Gibbs posterior concentration rates under sub-exponential type losses

Bayesian posterior distributions are widely used for inference, but thei...
research
01/31/2018

Demonstration of the Relationship between Sensitivity and Identifiability for Inverse Uncertainty Quantification

Inverse Uncertainty Quantification (UQ), or Bayesian calibration, is the...

Please sign up or login with your details

Forgot password? Click here to reset