prior
Uses the covariance of the prior distributions to define the MCMC proposal covariance.
Topics
bayesian_calibration
Specification
Alias: None
Arguments: None
Child Keywords:
Required/Optional |
Description of Group |
Dakota Keyword |
Dakota Keyword Description |
---|---|---|---|
Optional |
Multiplier to scale prior variance |
Description
This keyword selection results in definition of the MCMC proposal covariance from the covariance of the prior distributions. This covariance is currently assumed to be diagonal without correlation.
Default Behavior
This is the default proposal_covariance option.
Usage Tips
Since this proposal covariance is defined globally, the chain does not need to be periodically restarted using local updates to this proposal. However, it is usually effective to adapt the proposal using one of the adaptive metropolis MCMC options.
Examples
method,
bayes_calibration queso
samples = 2000 seed = 348
dram
proposal_covariance prior