metropolis_hastings

Use the Metropolis-Hastings MCMC algorithm

Topics

bayesian_calibration

Specification

  • Alias: None

  • Arguments: None

  • Default: dram

Description

This keyword specifies the use of a Metropolis-Hastings algorithm for the MCMC chain generation. This means there is no delayed rejection and no adaptive proposal covariance updating as in DRAM.

Default Behavior

Five MCMC algorithm variants are supported currently in QUESO: dram, delayed_rejection, adaptive_metropolis, metropolis_hastings, and multilevel. The default is dram.

Four MCMC algorithm variants are currently supported in MUQ: dram, delayed_rejection, metropolis_hastings and adaptive_metropolis.

Usage Tips

If the user wants to use Metropolis-Hastings, possibly as a comparison to the other methods which involve more chain adaptation, this is the MCMC type to use.

Examples

method,
        bayes_calibration queso
          metropolis_hastings
          samples = 10000 seed = 348