wasabi

(Experimental Method) Non-MCMC Bayesian inference using interval analysis

Specification

  • Alias: None

  • Arguments: None

Child Keywords:

Required/Optional

Description of Group

Dakota Keyword

Dakota Keyword Description

Required

pushforward_samples

(Experimental Capability) Number of samples of the prior to push forward through the model

Optional

seed

Seed of the random number generator

Optional

emulator

Use an emulator or surrogate model to evaluate the likelihood function

Optional

standardized_space

Perform Bayesian inference in standardized probability space

Required

data_distribution

(Experimental Capability) Specify the distribution of the experimental data

Optional

posterior_samples_import_filename

(Experimental Capability) Filename for samples at which the user would like the posterior density calculated

Optional

generate_posterior_samples

(Experimental Capability) Generate random samples from the posterior density

Optional

evaluate_posterior_density

(Experimental Capability) Evaluate the posterior density and output to the specified file

Description

Offers an alternative to Markov Chain Monte Carlo-based Bayesian inference. This is a nascent capability, not yet ready for production use.

Usage Guidelines: The WASABI method requires an emulator model.

Attention: While the emulator specification for WASABI includes the keyword posterior_adaptive, it is not yet operational.

Examples

method
  bayes_calibration
    wasabi