ml_pce
Multilevel Polynomial Chaos Expansion as an emulator model.
Specification
Alias: None
Arguments: None
Child Keywords:
Required/Optional  | 
Description of Group  | 
Dakota Keyword  | 
Dakota Keyword Description  | 
|---|---|---|---|
Optional  | 
Sample allocation approach for multilevel expansions  | 
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Optional  | 
Formulation for emulation of model discrepancies.  | 
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Optional (Choose One)  | 
Basis Polynomial Family  | 
Select the standardized random variables (and associated basis polynomials) from the Askey family that best match the user-specified random variables.  | 
|
Use standard normal random variables (along with Hermite orthogonal basis polynomials) when transforming to a standardized probability space.  | 
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Optional  | 
The normalized specification requests output of PCE coefficients that correspond to normalized orthogonal basis polynomials  | 
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Optional  | 
Export the coefficients and multi-index of a Polynomial Chaos Expansion (PCE) to a file  | 
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Optional (Choose One)  | 
Covariance Type  | 
Display only the diagonal terms of the covariance matrix  | 
|
Display the full covariance matrix  | 
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Description
Selects a multilevel polynomial chaos expansion (ML PCE) surrogate model to use in the Bayesian likelihood calculations. Most specification options are carried over for using ML PCE as a surrogate within the Bayesian framework.

