Dakota
Version 6.21
Explore and Predict with Confidence
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Bayesian inference using the QUESO library from UT Austin. More...
Public Member Functions | |
NonDQUESOBayesCalibration (ProblemDescDB &problem_db, Model &model) | |
standard constructor More... | |
~NonDQUESOBayesCalibration () | |
destructor | |
Public Member Functions inherited from NonDBayesCalibration | |
NonDBayesCalibration (ProblemDescDB &problem_db, Model &model) | |
standard constructor More... | |
~NonDBayesCalibration () | |
destructor | |
template<typename VectorType > | |
Real | prior_density (const VectorType &vec) |
compute the prior PDF for a particular MCMC sample | |
template<typename VectorType > | |
Real | log_prior_density (const VectorType &vec) |
compute the log prior PDF for a particular MCMC sample | |
template<typename Engine > | |
void | prior_sample (Engine &rng, RealVector &prior_samples) |
draw a multivariate sample from the prior distribution | |
template<typename VectorType > | |
void | prior_mean (VectorType &mean_vec) const |
return the mean of the prior distribution More... | |
template<typename MatrixType > | |
void | prior_variance (MatrixType &var_mat) const |
return the covariance of the prior distribution More... | |
template<> | |
Real | prior_density (const RealVector &vec) |
template<> | |
Real | log_prior_density (const RealVector &vec) |
Public Member Functions inherited from NonDCalibration | |
NonDCalibration (ProblemDescDB &problem_db, Model &model) | |
standard constructor More... | |
~NonDCalibration () | |
destructor | |
bool | resize () |
reinitializes iterator based on new variable size | |
Public Member Functions inherited from NonD | |
void | requested_levels (const RealVectorArray &req_resp_levels, const RealVectorArray &req_prob_levels, const RealVectorArray &req_rel_levels, const RealVectorArray &req_gen_rel_levels, short resp_lev_tgt, short resp_lev_tgt_reduce, bool cdf_flag, bool pdf_output) |
set requestedRespLevels, requestedProbLevels, requestedRelLevels, requestedGenRelLevels, respLevelTarget, cdfFlag, and pdfOutput (used in combination with alternate ctors) | |
void | print_level_mappings (std::ostream &s) const |
prints the z/p/beta/beta* mappings reflected in {requested,computed}{Resp,Prob,Rel,GenRel}Levels for default qoi_type and qoi_labels | |
void | print_level_mappings (std::ostream &s, String qoi_type, const StringArray &qoi_labels) const |
prints the z/p/beta/beta* mappings reflected in {requested,computed}{Resp,Prob,Rel,GenRel}Levels More... | |
void | print_level_mappings (std::ostream &s, const RealVector &level_maps, bool moment_offset, const String &prepend="") |
print level mapping statistics using optional pre-pend More... | |
bool | pdf_output () const |
get pdfOutput | |
void | pdf_output (bool output) |
set pdfOutput | |
short | final_moments_type () const |
get finalMomentsType | |
void | final_moments_type (short type) |
set finalMomentsType | |
Public Member Functions inherited from Analyzer | |
const VariablesArray & | all_variables () |
return the complete set of evaluated variables | |
const RealMatrix & | all_samples () |
return the complete set of evaluated samples | |
const IntResponseMap & | all_responses () const |
return the complete set of computed responses | |
size_t | num_samples () const |
virtual void | vary_pattern (bool pattern_flag) |
sets varyPattern in derived classes that support it | |
Public Member Functions inherited from Iterator | |
Iterator (std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
default constructor More... | |
Iterator (ProblemDescDB &problem_db, std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
standard envelope constructor, which constructs its own model(s) More... | |
Iterator (ProblemDescDB &problem_db, Model &model, std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
alternate envelope constructor which uses the ProblemDescDB but accepts a model from a higher level (meta-iterator) context, instead of constructing its own More... | |
Iterator (const String &method_string, Model &model, std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
alternate envelope constructor for instantiations by name without the ProblemDescDB More... | |
Iterator (const Iterator &iterator) | |
copy constructor More... | |
virtual | ~Iterator () |
destructor | |
Iterator | operator= (const Iterator &iterator) |
assignment operator | |
virtual void | post_input () |
read tabular data for post-run mode | |
virtual void | reset () |
restore initial state for repeated sub-iterator executions | |
virtual void | nested_variable_mappings (const SizetArray &c_index1, const SizetArray &di_index1, const SizetArray &ds_index1, const SizetArray &dr_index1, const ShortArray &c_target2, const ShortArray &di_target2, const ShortArray &ds_target2, const ShortArray &dr_target2) |
set primaryA{CV,DIV,DRV}MapIndices, secondaryA{CV,DIV,DRV}MapTargets within derived Iterators; supports computation of higher-level sensitivities in nested contexts (e.g., derivatives of statistics w.r.t. inserted design variables) | |
virtual void | nested_response_mappings (const RealMatrix &primary_coeffs, const RealMatrix &secondary_coeffs) |
set primaryResponseCoefficients, secondaryResponseCoefficients within derived Iterators; Necessary for scalarization case in MLMC NonDMultilevelSampling to map scalarization in nested context | |
virtual void | initialize_iterator (int job_index) |
used by IteratorScheduler to set the starting data for a run | |
virtual void | pack_parameters_buffer (MPIPackBuffer &send_buffer, int job_index) |
used by IteratorScheduler to pack starting data for an iterator run | |
virtual void | unpack_parameters_buffer (MPIUnpackBuffer &recv_buffer, int job_index) |
used by IteratorScheduler to unpack starting data for an iterator run | |
virtual void | unpack_parameters_initialize (MPIUnpackBuffer &recv_buffer, int job_index) |
used by IteratorScheduler to unpack starting data and initialize an iterator run | |
virtual void | pack_results_buffer (MPIPackBuffer &send_buffer, int job_index) |
used by IteratorScheduler to pack results data from an iterator run | |
virtual void | unpack_results_buffer (MPIUnpackBuffer &recv_buffer, int job_index) |
used by IteratorScheduler to unpack results data from an iterator run | |
virtual void | update_local_results (int job_index) |
used by IteratorScheduler to update local results arrays | |
virtual const RealSymMatrix & | response_error_estimates () const |
return error estimates associated with the final iterator solution | |
virtual bool | accepts_multiple_points () const |
indicates if this iterator accepts multiple initial points. Default return is false. Override to return true if appropriate. | |
virtual void | initial_point (const Variables &pt) |
sets the initial point for this iterator (user-functions mode for which Model updating is not used) | |
virtual void | initial_point (const RealVector &pt) |
sets the initial point (active continuous variables) for this iterator (user-functions mode for which Model updating is not used) | |
virtual void | initial_points (const VariablesArray &pts) |
sets the multiple initial points for this iterator. This should only be used if accepts_multiple_points() returns true. | |
virtual void | update_callback_data (const RealVector &cv_initial, const RealVector &cv_lower_bnds, const RealVector &cv_upper_bnds, const RealMatrix &lin_ineq_coeffs, const RealVector &lin_ineq_lb, const RealVector &lin_ineq_ub, const RealMatrix &lin_eq_coeffs, const RealVector &lin_eq_tgt, const RealVector &nln_ineq_lb, const RealVector &nln_ineq_ub, const RealVector &nln_eq_tgt) |
assign variable values and bounds and constraint coefficients and bounds for this iterator (user-functions mode for which iteratedModel is null) | |
virtual const RealMatrix & | callback_linear_ineq_coefficients () const |
return linear constraint coefficients for this iterator (user-functions mode for which iteratedModel is null) | |
virtual const RealVector & | callback_linear_ineq_lower_bounds () const |
return linear constraint lower bounds for this iterator (user-functions mode for which iteratedModel is null) | |
virtual const RealVector & | callback_linear_ineq_upper_bounds () const |
return linear constraint upper bounds for this iterator (user-functions mode for which iteratedModel is null) | |
virtual void | initialize_graphics (int iterator_server_id=1) |
initialize the 2D graphics window and the tabular graphics data More... | |
virtual void | check_sub_iterator_conflict () |
detect any conflicts due to recursive use of the same Fortran solver More... | |
virtual unsigned short | uses_method () const |
return name of any enabling iterator used by this iterator | |
virtual void | method_recourse (unsigned short method_name) |
perform a method switch, if possible, due to a detected conflict with the simultaneous use of method_name at an higher-level | |
virtual void | sampling_reset (size_t min_samples, bool all_data_flag, bool stats_flag) |
reset sampling iterator to use at least min_samples | |
virtual void | sampling_reference (size_t samples_ref) |
set reference number of samples, which is a lower bound during reset | |
virtual void | sampling_increment () |
increment to next in sequence of refinement samples | |
virtual void | random_seed (int seed) |
set randomSeed, if present | |
virtual unsigned short | sampling_scheme () const |
return sampling name | |
virtual IntIntPair | estimate_partition_bounds () |
estimate the minimum and maximum partition sizes that can be utilized by this Iterator | |
virtual void | declare_sources () |
Declare sources to the evaluations database. | |
void | init_communicators (ParLevLIter pl_iter) |
initialize the communicators associated with this Iterator instance | |
void | set_communicators (ParLevLIter pl_iter) |
set the communicators associated with this Iterator instance | |
void | free_communicators (ParLevLIter pl_iter) |
free the communicators associated with this Iterator instance | |
void | resize_communicators (ParLevLIter pl_iter, bool reinit_comms) |
Resize the communicators. This is called from the letter's resize() | |
void | parallel_configuration_iterator (ParConfigLIter pc_iter) |
set methodPCIter | |
ParConfigLIter | parallel_configuration_iterator () const |
return methodPCIter | |
void | parallel_configuration_iterator_map (std::map< size_t, ParConfigLIter > pci_map) |
set methodPCIterMap | |
std::map< size_t, ParConfigLIter > | parallel_configuration_iterator_map () const |
return methodPCIterMap | |
void | run (ParLevLIter pl_iter) |
invoke set_communicators(pl_iter) prior to run() | |
void | run () |
orchestrate initialize/pre/core/post/finalize phases More... | |
void | assign_rep (std::shared_ptr< Iterator > iterator_rep) |
replaces existing letter with a new one More... | |
void | iterated_model (const Model &model) |
set the iteratedModel (iterators and meta-iterators using a single model instance) | |
Model & | iterated_model () |
return the iteratedModel (iterators & meta-iterators using a single model instance) | |
ProblemDescDB & | problem_description_db () const |
return the problem description database (probDescDB) | |
ParallelLibrary & | parallel_library () const |
return the parallel library (parallelLib) | |
void | method_name (unsigned short m_name) |
set the method name to an enumeration value | |
unsigned short | method_name () const |
return the method name via its native enumeration value | |
void | method_string (const String &m_str) |
set the method name by string | |
String | method_string () const |
return the method name by string | |
String | method_enum_to_string (unsigned short method_enum) const |
convert a method name enumeration value to a string | |
unsigned short | method_string_to_enum (const String &method_str) const |
convert a method name string to an enumeration value | |
String | submethod_enum_to_string (unsigned short submethod_enum) const |
convert a sub-method name enumeration value to a string | |
const String & | method_id () const |
return the method identifier (methodId) | |
int | maximum_evaluation_concurrency () const |
return the maximum evaluation concurrency supported by the iterator | |
void | maximum_evaluation_concurrency (int max_conc) |
set the maximum evaluation concurrency supported by the iterator | |
size_t | maximum_iterations () const |
return the maximum iterations for this iterator | |
void | maximum_iterations (size_t max_iter) |
set the maximum iterations for this iterator | |
void | convergence_tolerance (Real conv_tol) |
set the method convergence tolerance (convergenceTol) | |
Real | convergence_tolerance () const |
return the method convergence tolerance (convergenceTol) | |
void | output_level (short out_lev) |
set the method output level (outputLevel) | |
short | output_level () const |
return the method output level (outputLevel) | |
void | summary_output (bool summary_output_flag) |
Set summary output control; true enables evaluation/results summary. | |
size_t | num_final_solutions () const |
return the number of solutions to retain in best variables/response arrays | |
void | num_final_solutions (size_t num_final) |
set the number of solutions to retain in best variables/response arrays | |
void | active_set (const ActiveSet &set) |
set the default active set (for use with iterators that employ evaluate_parameter_sets()) | |
const ActiveSet & | active_set () const |
return the default active set (used by iterators that employ evaluate_parameter_sets()) | |
void | active_set_request_vector (const ShortArray &asv) |
return the default active set request vector (used by iterators that employ evaluate_parameter_sets()) | |
const ShortArray & | active_set_request_vector () const |
return the default active set request vector (used by iterators that employ evaluate_parameter_sets()) | |
void | active_set_request_values (short asv_val) |
return the default active set request vector (used by iterators that employ evaluate_parameter_sets()) | |
void | sub_iterator_flag (bool si_flag) |
set subIteratorFlag (and update summaryOutputFlag if needed) | |
bool | is_null () const |
function to check iteratorRep (does this envelope contain a letter?) | |
std::shared_ptr< Iterator > | iterator_rep () const |
returns iteratorRep for access to derived class member functions that are not mapped to the top Iterator level | |
virtual void | eval_tag_prefix (const String &eval_id_str) |
set the hierarchical eval ID tag prefix More... | |
std::shared_ptr< TraitsBase > | traits () const |
returns methodTraits for access to derived class member functions that are not mapped to the top TraitsBase level | |
bool | top_level () |
Return whether the iterator is the top level iterator. | |
void | top_level (bool tflag) |
Set the iterator's top level flag. | |
Protected Member Functions | |
void | calibrate () |
void | print_results (std::ostream &s, short results_state=FINAL_RESULTS) override |
print the final iterator results More... | |
void | init_queso_environment () |
initialize the QUESO FullEnvironment on the Dakota MPIComm | |
void | init_precond_request_value () |
initialize the ASV value for preconditioned cases | |
void | specify_prior () override |
intialize the QUESO parameter space, min, max, initial, domain, and prior define solver options, likelihood callback, posterior RV, and inverse problem More... | |
void | specify_likelihood () override |
void | init_bayesian_solver () override |
void | specify_posterior () override |
void | precondition_proposal (unsigned int chain_index) |
use derivative information from the emulator to define the proposal covariance (inverse of misfit Hessian) | |
void | run_queso_solver () |
perform the MCMC process | |
void | map_pre_solve () override |
void | run_chain () |
short term option to restart the MCMC chain with updated proposal density computed from the emulator at a new starting point | |
void | cache_chain () |
cache the chain to acceptanceChain and acceptedFnVals More... | |
void | log_best () |
log at most batchSize best chain points into bestSamples | |
void | filter_chain_by_conditioning () override |
extract batchSize points from the MCMC chain and store final aggregated set within allSamples; unique points with best conditioning are selected, as determined by pivoted LU | |
void | init_proposal_covariance () |
void | prior_proposal_covariance () |
use covariance of prior distribution for setting proposal covariance More... | |
void | user_proposal_covariance (const String &input_fmt, const RealVector &cov_data, const String &cov_filename) |
Set proposal covariance from user-provided diagonal or matrix. More... | |
void | validate_proposal () |
void | set_ip_options () |
Set inverse problem options calIpOptionsValues common to all solvers. More... | |
void | set_mh_options () |
Set MH-specific inverse problem options calIpMhOptionsValues. | |
void | update_chain_size (unsigned int size) |
update MH-specific inverse problem options calIpMhOptionsValues | |
void | copy_gsl (const QUESO::GslVector &qv, RealVector &rv) |
local copy_data utility from GslVector to RealVector | |
void | copy_gsl (const RealVector &rv, QUESO::GslVector &qv) |
local copy_data utility from RealVector to GslVector | |
void | copy_gsl_partial (const QUESO::GslVector &qv, size_t start, RealVector &rv) |
local copy_data utility from portion of GslVector to RealVector | |
void | copy_gsl_partial (const RealVector &rv, QUESO::GslVector &qv, size_t start) |
local copy_data utility from RealVector to portion of GslVector | |
void | copy_gsl (const QUESO::GslVector &qv, RealMatrix &rm, int i) |
local copy_data utility from GslVector to column in RealMatrix | |
bool | equal_gsl (const QUESO::GslVector &qv1, const QUESO::GslVector &qv2) |
equality tester for two GslVectors | |
Protected Member Functions inherited from NonDBayesCalibration | |
void | pre_run () |
pre-run portion of run (optional); re-implemented by Iterators which can generate all Variables (parameter sets) a priori More... | |
void | core_run () |
core portion of run; implemented by all derived classes and may include pre/post steps in lieu of separate pre/post More... | |
void | derived_init_communicators (ParLevLIter pl_iter) |
derived class contributions to initializing the communicators associated with this Iterator instance | |
void | derived_set_communicators (ParLevLIter pl_iter) |
derived class contributions to setting the communicators associated with this Iterator instance | |
void | derived_free_communicators (ParLevLIter pl_iter) |
derived class contributions to freeing the communicators associated with this Iterator instance | |
void | print_variables (std::ostream &s, const RealVector &c_vars) |
convenience function to print calibration parameters, e.g., for MAP / best parameters | |
const Model & | algorithm_space_model () const |
void | construct_mcmc_model () |
construct mcmcModel (no emulation, GP, PCE, or SC) that wraps inbound Model | |
void | init_hyper_parameters () |
initialize the hyper-parameter priors | |
void | init_map_optimizer () |
initialize the MAP optimizer selection More... | |
void | construct_map_model () |
construct the negative log posterior RecastModel (negLogPostModel) | |
void | construct_map_optimizer () |
construct the MAP optimizer for minimization of negLogPostModel | |
void | initialize_model () |
initialize emulator model and probability space transformations | |
void | calibrate_with_adaptive_emulator () |
Run calibration, looping to refine emulator around posterior mode. More... | |
void | best_to_all () |
copy bestSamples to allSamples to use in surrogate update | |
void | update_model () |
evaluates allSamples on iteratedModel and update the mcmcModel emulator with all{Samples,Responses} | |
Real | assess_emulator_convergence () |
compute the L2 norm of the change in emulator coefficients | |
void | calibrate_to_hifi () |
calibrate the model to a high-fidelity data source, using mutual information-guided design of experiments (adaptive experimental design) | |
void | eval_hi2lo_stop (bool &stop_metric, double &prev_MI, const RealVector &MI_vec, int num_hifi, int max_hifi, int num_candidates) |
evaluate stopping criteria for calibrate_to_hifi | |
void | print_hi2lo_file (std::ostream &out_file, int num_it, const VariablesArray &optimal_config_matrix, const RealVector &MI_vec, RealMatrix &resp_matrix) |
print calibrate_to_hifi progress to file | |
void | print_hi2lo_begin (int num_it) |
print calibrate_to_hifi progress | |
void | print_hi2lo_status (int num_it, int i, const Variables &xi_i, double MI) |
void | print_hi2lo_batch_status (int num_it, int batch_n, int batchEvals, const Variables &optimal_config, double max_MI) |
void | print_hi2lo_selected (int num_it, const VariablesArray &optimal_config_matrix, const RealVector &MI_vec) |
void | print_hi2lo_chain_moments () |
void | add_lhs_hifi_data () |
supplement high-fidelity data with LHS samples | |
void | choose_batch_from_mutual_info (int random_seed, int num_it, int max_hifi, int num_hifi, RealMatrix &mi_chain, VariablesArray &design_matrix, VariablesArray &optimal_config_matrix, RealVector &MI_vec) |
calculate the optimal points to add for a given batch | |
void | apply_hifi_sim_error (int &random_seed, int num_exp, int exp_offset=0) |
apply simulation error vector | |
void | apply_error_vec (const RealVector &error_vec, int &seed, int experiment) |
void | build_error_matrix (const RealVector &sim_error_vec, RealMatrix &sim_error_matrix, int &seed) |
build matrix of errors | |
void | build_designs (VariablesArray &design_matrix) |
build matrix of candidate points More... | |
void | build_hi2lo_xmatrix (RealMatrix &Xmatrix, int i, const RealMatrix &mi_chain, RealMatrix &sim_error_matrix) |
build matrix to calculate mutual information for calibrate_to_hifi | |
void | run_hifi (const VariablesArray &optimal_config_matrix, RealMatrix &resp_matrix) |
run high-fidelity model at several configs and add to experiment data | |
void | build_model_discrepancy () |
calculate model discrepancy with respect to experimental data | |
void | build_scalar_discrepancy () |
void | build_field_discrepancy () |
void | build_GP_field (const RealMatrix &t, RealMatrix &t_pred, const RealVector &concat_disc, RealVector &disc_pred, RealVector &disc_var) |
void | calculate_kde () |
calculate a Kernel Density Estimate (KDE) for the posterior samples | |
void | calculate_evidence () |
calculate the model evidence | |
void | extract_selected_posterior_samples (const std::vector< int > &points_to_keep, const RealMatrix &samples_for_posterior_eval, const RealVector &posterior_density, RealMatrix &posterior_data) const |
void | export_posterior_samples_to_file (const std::string filename, const RealMatrix &posterior_data) const |
template<typename VectorType1 , typename VectorType2 > | |
void | augment_gradient_with_log_prior (VectorType1 &log_grad, const VectorType2 &vec) |
compute the (approximate) gradient of the negative log posterior by augmenting the (approximate) gradient of the negative log likelihood with the gradient of the negative log prior | |
template<typename MatrixType , typename VectorType > | |
void | augment_hessian_with_log_prior (MatrixType &log_hess, const VectorType &vec) |
compute the (approximate) Hessian of the negative log posterior by augmenting the (approximate) Hessian of the negative log likelihood with the Hessian of the negative log prior | |
Real | log_likelihood (const RealVector &residuals, const RealVector &hyper_params) |
calculate log-likelihood from the passed residuals (assuming they are already sized and scaled by covariance / hyperparams... More... | |
void | prior_cholesky_factorization () |
compute priorCovCholFactor based on prior distributions for random variables and any hyperparameters | |
void | get_positive_definite_covariance_from_hessian (const RealSymMatrix &hessian, RealSymMatrix &covariance) |
member version forwards member data to static function | |
void | scale_model () |
Wrap iteratedModel in a RecastModel that performs response scaling. More... | |
void | weight_model () |
Wrap iteratedModel in a RecastModel that weights the residuals. More... | |
void | export_discrepancy (RealMatrix &pred_config_mat) |
print tabular files containing model+discrepancy responses and variances | |
void | export_field_discrepancy (RealMatrix &pred_vars_mat) |
print tabular files containing model+discrepancy responses and variances for field responses | |
virtual void | compute_statistics () |
Compute final stats for MCMC chains. | |
void | export_chain () |
export the acceptance chain in user space | |
void | export_chain (RealMatrix &filtered_chain, RealMatrix &filtered_fn_vals) |
Print filtered posterior and function values (later: credibility and prediction intervals) More... | |
void | filter_chain (const RealMatrix &acceptance_chain, RealMatrix &filtered_chain, int target_length) |
Perform chain filtering based on target chain length. | |
void | filter_chain (const RealMatrix &acceptance_chain, RealMatrix &filtered_chain) |
Perform chain filtering with burn-in and sub-sampling. | |
void | filter_fnvals (const RealMatrix &accepted_fn_vals, RealMatrix &filtered_fn_vals) |
void | filter_matrix_cols (const RealMatrix &orig_matrix, int start_index, int stride, RealMatrix &filtered_matrix) |
return a newly allocated filtered matrix including start_index and every stride-th index after; for burn-in cases, start_index is the number of burn-in discards | |
void | compute_intervals () |
void | compute_prediction_vals (RealMatrix &filtered_fn_vals, RealMatrix &PredVals, int num_filtered, size_t num_exp, size_t num_concatenated) |
void | print_intervals_file (std::ostream &stream, RealMatrix &functionvalsT, RealMatrix &predvalsT, int length, size_t aug_length) |
void | print_intervals_screen (std::ostream &stream, RealMatrix &functionvalsT, RealMatrix &predvalsT, int length) |
void | kl_post_prior (RealMatrix &acceptanceChain) |
Compute information metrics. | |
void | prior_sample_matrix (RealMatrix &prior_dist_samples) |
void | mutual_info_buildX () |
void | print_kl (std::ostream &stream) |
void | print_chain_diagnostics (std::ostream &s) |
void | print_batch_means_intervals (std::ostream &s) |
Protected Member Functions inherited from NonD | |
NonD (ProblemDescDB &problem_db, Model &model) | |
constructor | |
NonD (unsigned short method_name, Model &model) | |
alternate constructor for sample generation and evaluation "on the fly" | |
NonD (unsigned short method_name, Model &model, const ShortShortPair &approx_view) | |
alternate constructor for sample generation and evaluation "on the fly" | |
NonD (unsigned short method_name, const RealVector &lower_bnds, const RealVector &upper_bnds) | |
alternate constructor for sample generation "on the fly" | |
~NonD () | |
destructor | |
void | initialize_run () |
utility function to perform common operations prior to pre_run(); typically memory initialization; setting of instance pointers More... | |
void | finalize_run () |
utility function to perform common operations following post_run(); deallocation and resetting of instance pointers More... | |
const Response & | response_results () const |
return the final statistics from the nondeterministic iteration | |
void | response_results_active_set (const ActiveSet &set) |
set the active set within finalStatistics | |
virtual void | initialize_response_covariance () |
initializes respCovariance | |
virtual void | initialize_final_statistics () |
initializes finalStatistics for storing NonD final results More... | |
virtual void | update_final_statistics () |
update finalStatistics::functionValues | |
virtual bool | discrepancy_sample_counts () const |
flag identifying whether sample counts correspond to level discrepancies | |
void | pull_level_mappings (RealVector &level_maps, size_t offset) |
concatenate computed{Resp,Prob,Rel,GenRel}Levels into level_maps | |
void | push_level_mappings (const RealVector &level_maps, size_t offset) |
update computed{Resp,Prob,Rel,GenRel}Levels from level_maps | |
void | configure_1d_sequence (size_t &num_steps, size_t &secondary_index, short &seq_type) |
configure a one-dimensional hierarchical sequence (ML or MF) More... | |
void | configure_2d_sequence (size_t &num_steps, size_t &secondary_index, short &seq_type) |
configure a two-dimensional hierarchical sequence (MLMF) More... | |
void | configure_enumeration (size_t &num_combinations, short &seq_type) |
configure the total number of model form/resolution level options More... | |
short | configure_cost (size_t num_steps, short seq_type, RealVector &cost) |
extract cost estimates from model ensemble, enforcing requirements (case without metadata support) | |
short | configure_cost (size_t num_steps, short seq_type, RealVector &cost, SizetSizetPairArray &cost_md_indices) |
extract cost estimates from model ensemble, enforcing requirements (case with metadata support) | |
short | query_cost (size_t num_steps, short seq_type, RealVector &cost) |
optionally extract cost estimates from model ensemble, if available (case without metadata support) | |
short | query_cost (size_t num_steps, short seq_type, RealVector &cost, BitArray &model_cost_spec, const SizetSizetPairArray &cost_md_indices) |
optionally extract cost estimates from model ensemble, if available (case with metadata support) | |
void | test_cost (short seq_type, const BitArray &model_cost_spec, SizetSizetPairArray &cost_md_indices) |
check cost specification and metadata indices for each active model | |
bool | test_cost (bool cost_spec, SizetSizetPair &cost_md_indices, const String &model_id) |
check cost specification and metadata indices for a given model | |
bool | valid_cost (Real cost) const |
test cost for value > 0 | |
bool | valid_costs (const RealVector &costs) const |
test costs for valid values > 0 | |
void | load_pilot_sample (const SizetArray &pilot_spec, size_t num_steps, SizetArray &delta_N_l) |
distribute pilot sample specification across model forms or levels | |
void | load_pilot_sample (const SizetArray &pilot_spec, short seq_type, const Sizet3DArray &N_l, Sizet2DArray &delta_N_l) |
distribute pilot sample specification across model forms and levels | |
template<typename ArrayType > | |
void | inflate_approx_samples (const ArrayType &N_l, bool multilev, size_t secondary_index, std::vector< ArrayType > &N_l_vec) |
update the relevant slice of N_l_3D from the final 2D multilevel or 2D multifidelity sample profile | |
template<typename ArrayType > | |
void | inflate_sequence_samples (const ArrayType &N_l, bool multilev, size_t secondary_index, std::vector< ArrayType > &N_l_vec) |
update the relevant slice of N_l_3D from the final 2D multilevel or 2D multifidelity sample profile | |
void | resize_final_statistics_gradients () |
resizes finalStatistics::functionGradients based on finalStatistics ASV | |
void | update_aleatory_final_statistics () |
update finalStatistics::functionValues from momentStats and computed{Prob,Rel,GenRel,Resp}Levels | |
void | update_system_final_statistics () |
update system metrics from component metrics within finalStatistics | |
void | update_system_final_statistics_gradients () |
update finalStatistics::functionGradients | |
void | initialize_level_mappings () |
size computed{Resp,Prob,Rel,GenRel}Levels | |
void | compute_densities (const RealRealPairArray &min_max_fns, bool prob_refinement=false, bool all_levels_computed=false) |
compute the PDF bins from the CDF/CCDF values and store in computedPDF{Abscissas,Ordinates} More... | |
void | print_densities (std::ostream &s) const |
output the PDFs reflected in computedPDF{Abscissas,Ordinates} using default qoi_type and pdf_labels | |
void | print_densities (std::ostream &s, String qoi_type, const StringArray &pdf_labels) const |
output the PDFs reflected in computedPDF{Abscissas,Ordinates} | |
void | print_system_mappings (std::ostream &s) const |
print system series/parallel mappings for response levels | |
void | print_multilevel_evaluation_summary (std::ostream &s, const SizetArray &N_m) |
print evaluation summary for multilevel sampling across 1D level profile | |
void | print_multilevel_evaluation_summary (std::ostream &s, const Sizet2DArray &N_m) |
print evaluation summary for multilevel sampling across 2D level+QoI profile | |
void | print_multilevel_discrepancy_summary (std::ostream &s, const SizetArray &N_m) |
print evaluation summary for multilevel sampling across 1D level profile for discrepancy across levels | |
void | print_multilevel_discrepancy_summary (std::ostream &s, const SizetArray &N_m, const SizetArray &N_mp1) |
print evaluation summary for multilevel sampling across 1D level profile for discrepancy across model forms | |
void | print_multilevel_discrepancy_summary (std::ostream &s, const Sizet2DArray &N_m) |
print evaluation summary for multilevel sampling across 2D level+QoI profile for discrepancy across levels | |
void | print_multilevel_discrepancy_summary (std::ostream &s, const Sizet2DArray &N_m, const Sizet2DArray &N_mp1) |
print evaluation summary for multilevel sampling across 2D level+QoI profile for discrepancy across model forms | |
template<typename ArrayType > | |
void | print_multilevel_model_summary (std::ostream &s, const std::vector< ArrayType > &N_samp, String type, short seq_type, bool discrep_flag) |
print evaluation summary for multilevel sampling across 2D model+level profile (allocations) or 3D model+level+QoI profile (actual) | |
void | construct_lhs (Iterator &u_space_sampler, Model &u_model, unsigned short sample_type, int num_samples, int seed, const String &rng, bool vary_pattern, short sampling_vars_mode=ACTIVE) |
assign a NonDLHSSampling instance within u_space_sampler | |
unsigned short | sub_optimizer_select (unsigned short requested_sub_method, unsigned short default_sub_method=SUBMETHOD_NPSOL) |
utility for vetting sub-method request against optimizers within the package configuration | |
size_t | one_sided_relax_round (Real diff, Real relax_factor=1.) |
compute a one-sided sample increment for multilevel methods to move current sampling level to a new target | |
size_t | one_sided_delta (Real current, Real target, Real relax_factor=1.) |
compute a one-sided sample increment for multilevel methods to move current sampling level to a new target | |
size_t | one_sided_delta (const SizetArray ¤t, const RealVector &targets, Real relax_factor=1., size_t power=1) |
compute a one-sided sample increment for multilevel methods to move current sampling level to a new target | |
size_t | one_sided_delta (const SizetArray ¤t, Real target, Real relax_factor=1., size_t power=1) |
compute a one-sided sample increment for multilevel methods to move current sampling level to a new target | |
void | one_sided_delta (const SizetArray ¤t, const RealVector &targets, SizetArray &delta_N, Real relax_factor=1.) |
compute a one-sided sample increment vector to move current sampling levels to new targets | |
void | one_sided_delta (const Sizet2DArray ¤t, const RealVector &targets, SizetArray &delta_N, Real relax_factor=1.) |
compute a one-sided sample increment vector to move current sampling levels to new targets | |
bool | differ (size_t N_alloc_ij, const SizetArray &N_actual_ij) const |
return true if fine-grained reporting differs from coarse-grained | |
bool | differ (const SizetArray &N_alloc_i, const Sizet2DArray &N_actual_i) const |
return true if fine-grained reporting differs from coarse-grained | |
bool | differ (const Sizet2DArray &N_alloc, const Sizet3DArray &N_actual) const |
return true if fine-grained reporting differs from coarse-grained | |
void | archive_allocate_mappings () |
allocate results array storage for distribution mappings | |
void | archive_from_resp (size_t fn_index, size_t inc_id=0) |
archive the mappings from specified response levels for specified fn | |
void | archive_to_resp (size_t fn_index, size_t inc_id=0) |
archive the mappings to computed response levels for specified fn and (optional) increment id. | |
void | archive_allocate_pdf () |
allocate results array storage for pdf histograms | |
void | archive_pdf (size_t fn_index, size_t inc_id=0) |
archive a single pdf histogram for specified function | |
void | archive_equiv_hf_evals (const Real equiv_hf_evals) |
archive the equivalent number of HF evals (used by ML/MF methods) | |
bool | zeros (const SizetArray &N_m) const |
return true if N_m is empty or only populated with zeros | |
bool | zeros (const Sizet2DArray &N_m) const |
return true if N_m is empty or only populated with zeros | |
bool | zeros (const SizetVector &N_m) const |
return true if N_m is empty or only populated with zeros | |
bool | homogeneous (const SizetArray &N_l) const |
return true if N_l has consistent values | |
Protected Member Functions inherited from Analyzer | |
Analyzer () | |
default constructor | |
Analyzer (ProblemDescDB &problem_db, Model &model) | |
standard constructor | |
Analyzer (unsigned short method_name, Model &model) | |
alternate constructor for instantiations "on the fly" with a Model | |
Analyzer (unsigned short method_name, Model &model, const ShortShortPair &view_override) | |
alternate constructor for instantiations "on the fly" with a Model | |
Analyzer (unsigned short method_name) | |
alternate constructor for instantiations "on the fly" without a Model | |
~Analyzer () | |
destructor | |
virtual void | get_parameter_sets (Model &model) |
Generate one block of numSamples samples (ndim * num_samples), populating allSamples; ParamStudy is the only class that specializes to use allVariables. | |
virtual void | get_parameter_sets (Model &model, const size_t num_samples, RealMatrix &design_matrix) |
Generate one block of numSamples samples (ndim * num_samples), populating design_matrix. | |
virtual void | update_model_from_sample (Model &model, const Real *sample_vars) |
update model's current variables with data from sample | |
virtual void | update_model_from_variables (Model &model, const Variables &vars) |
update model's current variables with data from vars | |
virtual void | sample_to_variables (const Real *sample_vars, Variables &vars) |
convert column of samples array to variables; derived classes may reimplement for more than active continuous variables More... | |
void | update_from_model (const Model &model) |
set inherited data attributes based on extractions from incoming model | |
void | post_run (std::ostream &s) |
post-run portion of run (optional); verbose to print results; re-implemented by Iterators that can read all Variables/Responses and perform final analysis phase in a standalone way More... | |
void | pre_output () |
const Variables & | variables_results () const |
return a single final iterator solution (variables) | |
const VariablesArray & | variables_array_results () |
return multiple final iterator solutions (variables). This should only be used if returns_multiple_points() returns true. | |
const ResponseArray & | response_array_results () |
return multiple final iterator solutions (response). This should only be used if returns_multiple_points() returns true. | |
bool | compact_mode () const |
returns Analyzer::compactMode | |
bool | returns_multiple_points () const |
indicates if this iterator returns multiple final points. Default return is false. Override to return true if appropriate. | |
void | evaluate_parameter_sets (Model &model, bool log_resp_flag=true, bool log_best_flag=false) |
perform function evaluations to map parameter sets (allVariables) into response sets (allResponses) More... | |
void | evaluate_batch (Model &model, int batch_id, bool log_best_flag=false) |
perform function evaluations to map a keyed batch of parameter sets (allVariablesMap[key]) into a corresponding batch of response sets (allResponsesMap[key]) | |
const IntIntResponse2DMap & | synchronize_batches (Model &model, bool log_best_flag=false) |
perform function evaluations to map a keyed batch of parameter sets (allVariablesMap[key]) into a corresponding batch of response sets (allResponsesMap[key]) | |
void | clear_batches () |
since synchronize returns the aggregation of all evaluated batches, we use a separate call to indicate when processing of this data is complete and bookkeeping can be cleared | |
void | get_vbd_parameter_sets (Model &model, size_t num_samples) |
generate replicate parameter sets for use in variance-based decomposition More... | |
virtual void | archive_model_variables (const Model &, size_t idx) const |
archive model evaluation points | |
virtual void | archive_model_response (const Response &, size_t idx) const |
archive model evaluation responses | |
void | read_variables_responses (int num_evals, size_t num_vars) |
convenience function for reading variables/responses (used in derived classes post_input) More... | |
void | samples_to_variables_array (const RealMatrix &sample_matrix, VariablesArray &vars_array) |
convert samples array to variables array; e.g., allSamples to allVariables | |
virtual void | variables_to_sample (const Variables &vars, Real *sample_c_vars) |
convert the active continuous variables into a column of allSamples More... | |
void | variables_array_to_samples (const VariablesArray &vars_array, RealMatrix &sample_matrix) |
convert variables array to samples array; e.g., allVariables to allSamples | |
Protected Member Functions inherited from Iterator | |
Iterator (BaseConstructor, ProblemDescDB &problem_db, std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
constructor initializes the base class part of letter classes (BaseConstructor overloading avoids infinite recursion in the derived class constructors - Coplien, p. 139) More... | |
Iterator (NoDBBaseConstructor, unsigned short method_name, Model &model, std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
alternate constructor for base iterator classes constructed on the fly More... | |
Iterator (NoDBBaseConstructor, unsigned short method_name, std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
alternate constructor for base iterator classes constructed on the fly More... | |
Iterator (NoDBBaseConstructor, Model &model, size_t max_iter, size_t max_eval, Real conv_tol, std::shared_ptr< TraitsBase > traits=std::shared_ptr< TraitsBase >(new TraitsBase())) | |
alternate envelope constructor for instantiations without ProblemDescDB More... | |
virtual const VariablesArray & | initial_points () const |
gets the multiple initial points for this iterator. This will only be meaningful after a call to initial_points mutator. | |
StrStrSizet | run_identifier () const |
get the unique run identifier based on method name, id, and number of executions | |
void | initialize_model_graphics (Model &model, int iterator_server_id) |
helper function that encapsulates initialization operations, modular on incoming Model instance More... | |
void | export_final_surrogates (Model &data_fit_surr_model) |
export final surrogates generated, e.g., GP in EGO and friends More... | |
Static Protected Member Functions | |
static double | dakotaLogLikelihood (const QUESO::GslVector ¶mValues, const QUESO::GslVector *paramDirection, const void *functionDataPtr, QUESO::GslVector *gradVector, QUESO::GslMatrix *hessianMatrix, QUESO::GslVector *hessianEffect) |
Log Likelihood function for call-back from QUESO to DAKOTA for evaluation. | |
Static Protected Member Functions inherited from NonDBayesCalibration | |
static void | neg_log_post_resp_mapping (const Variables &model_vars, const Variables &nlpost_vars, const Response &model_resp, Response &nlpost_resp) |
static function passed by pointer to negLogPostModel recast model More... | |
static void | ann_dist (const ANNpointArray matrix1, const ANNpointArray matrix2, RealVector &distances, int NX, int NY, int dim2, IntVector &k, double eps) |
static void | ann_dist (const ANNpointArray matrix1, const ANNpointArray matrix2, RealVector &distances, Int2DArray &indices, int NX, int NY, int dim2, IntVector &k, double eps) |
Static Protected Member Functions inherited from Iterator | |
static void | gnewton_set_recast (const Variables &recast_vars, const ActiveSet &recast_set, ActiveSet &sub_model_set) |
conversion of request vector values for the Gauss-Newton Hessian approximation More... | |
Protected Attributes | |
String | mcmcType |
MCMC type ("dram" or "delayed_rejection" or "adaptive_metropolis" or "metropolis_hastings" or "multilevel", within QUESO) | |
int | propCovUpdatePeriod |
period (number of accepted chain samples) for proposal covariance update | |
short | precondRequestValue |
the active set request value to use in proposal preconditioning | |
bool | logitTransform |
flag indicating user activation of logit transform option More... | |
std::shared_ptr< QUESO::EnvOptionsValues > | envOptionsValues |
options for setting up the QUESO Environment | |
std::shared_ptr< QUESO::FullEnvironment > | quesoEnv |
top-level QUESO Environment | |
std::shared_ptr< QUESO::VectorSpace< QUESO::GslVector, QUESO::GslMatrix > > | paramSpace |
QUESO parameter space based on number of calibrated parameters. | |
std::shared_ptr< QUESO::BoxSubset< QUESO::GslVector, QUESO::GslMatrix > > | paramDomain |
QUESO parameter domain: hypercube based on min/max values. | |
std::shared_ptr< QUESO::GslVector > | paramInitials |
initial parameter values at which to start chain | |
std::shared_ptr< QUESO::BaseVectorRV< QUESO::GslVector, QUESO::GslMatrix > > | priorRv |
random variable for the prior | |
std::shared_ptr< QUESO::GslMatrix > | proposalCovMatrix |
proposal covariance for DRAM | |
double | priorPropCovMult |
optional multiplier to scale prior-based proposal covariance | |
std::shared_ptr< QUESO::SipOptionsValues > | calIpOptionsValues |
general inverse problem options | |
std::shared_ptr< QUESO::MhOptionsValues > | calIpMhOptionsValues |
MH-specific inverse problem options. | |
std::shared_ptr< QUESO::GenericScalarFunction< QUESO::GslVector, QUESO::GslMatrix > > | likelihoodFunctionObj |
std::shared_ptr< QUESO::GenericVectorRV< QUESO::GslVector, QUESO::GslMatrix > > | postRv |
random variable for the posterior | |
std::shared_ptr< QUESO::StatisticalInverseProblem< QUESO::GslVector, QUESO::GslMatrix > > | inverseProb |
QUESO inverse problem solver. | |
String | advancedOptionsFile |
advanced options file name (GPMSA only); settings from this file override any C++ / Dakota input file settings | |
Protected Attributes inherited from NonDBayesCalibration | |
String | scalarDataFilename |
short | emulatorType |
the emulator type: NO_EMULATOR, GP_EMULATOR, PCE_EMULATOR, SC_EMULATOR, ML_PCE_EMULATOR, MF_PCE_EMULATOR, or MF_SC_EMULATOR | |
RealVectorArray | prevCoeffs |
cache previous expansion coefficients for assessing convergence of emulator refinement process | |
Model | mcmcModel |
Model instance employed in the likelihood function; provides response function values from Gaussian processes, stochastic expansions (PCE/SC), or direct access to simulations (no surrogate option) | |
bool | mcmcModelHasSurrogate |
whether the MCMC Model is a surrogate, or a thin transformation around a surrogate, so can be cheaply re-evaluated in chain recovery | |
Model | residualModel |
DataTransformModel wrapping the mcmcModel. | |
Iterator | mapOptimizer |
SQP or NIP optimizer for pre-solving for the MAP point prior to MCMC. This is restricted to emulator cases for now, but as for derivative preconditioning, could be activated for no-emulator cases with a specification option (not active by default). | |
Model | negLogPostModel |
RecastModel for solving for MAP: reduces residualModel to scalar negative log posterior. | |
unsigned short | mapOptAlgOverride |
user setting of the MAP optimization algorithm type | |
Iterator | stochExpIterator |
NonDPolynomialChaos or NonDStochCollocation instance for defining a PCE/SC-based mcmcModel. | |
int | chainSamples |
number of samples in the chain (e.g. number of MCMC samples); for iterative update cycles, number of samples per update cycle | |
int | randomSeed |
random seed for MCMC process | |
unsigned int | batchSize |
number of points to add to surrogate at each iteration of calibrate_with_adaptive_emulator | |
short | mcmcDerivOrder |
order of derivatives used in MCMC process (bitwise like ASV) | |
RealVector | mapSoln |
solution for most recent MAP pre-solve; also serves as initial guess for initializing the first solve and warm-starting the next solve (posterior emulator refinement) | |
bool | adaptExpDesign |
whether to perform iterative design of experiments with high-fidelity model | |
size_t | numCandidates |
number of candidate designs for adaptive Bayesian experimental design | |
String | importCandPtsFile |
whether to import candidate design points for adaptive Bayesian experimental design | |
unsigned short | importCandFormat |
tabular format for the candidate design points import file | |
int | maxHifiEvals |
maximum number of high-fidelity model runs to be used for adaptive Bayesian experimental design | |
int | batchEvals |
number of optimal designs selected per iteration of experimental design algorithm | |
unsigned short | mutualInfoAlg |
algorithm to employ in calculating mutual information | |
bool | readFieldCoords |
need field coordinates for model discrepancy | |
bool | calModelDiscrepancy |
flag whether to calculate model discrepancy | |
String | discrepancyType |
set discrepancy type | |
String | exportCorrModelFile |
filename for corrected model (model+discrepancy) calculations output | |
String | exportDiscrepFile |
filename for discrepancy calculations output | |
String | exportCorrVarFile |
filename for corrected model variance calculations | |
unsigned short | exportCorrModelFormat |
format options for corrected model output | |
unsigned short | exportDiscrepFormat |
format options for discrepancy output | |
unsigned short | exportCorrVarFormat |
format options for corrected model variance output | |
short | discrepPolyOrder |
specify polynomial or trend order for discrepancy correction | |
size_t | numPredConfigs |
number of prediction configurations at which to calculate model discrepancy | |
RealVector | configLowerBnds |
lower bounds on configuration domain | |
RealVector | configUpperBnds |
upper bounds on configuration domain | |
ResponseArray | discrepancyResponses |
array containing predicted of model+discrepancy | |
ResponseArray | correctedResponses |
array containing predicted of model+discrepancy | |
RealMatrix | correctedVariances |
matrix containing variances of model+discrepancy | |
RealVector | predictionConfigList |
list of prediction configurations at which to calculate model discrepancy | |
String | importPredConfigs |
whether to import prediction configurations at which to calculate model discrepancy | |
unsigned short | importPredConfigFormat |
tabular format for prediction configurations import file | |
RealVector | discrepancyFieldResponses |
array containing predicted of model+discrepancy | |
RealVector | correctedFieldResponses |
array containing predicted of model+discrepancy | |
RealVector | correctedFieldVariances |
matrix containing variances of model+discrepancy | |
Model | hifiModel |
a high-fidelity model data source (given by pointer in input) | |
int | initHifiSamples |
initial high-fidelity model samples | |
Iterator | hifiSampler |
LHS iterator to generate hi-fi model data. | |
RealMatrix | priorCovCholFactor |
the Cholesky factor of the prior covariance | |
unsigned short | obsErrorMultiplierMode |
mode for number of observation error multipliers to calibrate (default none) | |
int | numHyperparams |
calculated number of hyperparameters augmenting the calibration parameter set, e.g., due to calibrate observation error multipliers | |
RealVector | invGammaAlphas |
alphas for inverse gamma distribution on hyper-params | |
RealVector | invGammaBetas |
alphas for inverse gamma distribution on hyper-params | |
std::vector< Pecos::RandomVariable > | invGammaDists |
distributions for hyper-params | |
bool | standardizedSpace |
flag indicating use of a variable transformation to standardized probability space for the model or emulator | |
bool | posteriorStatsKL |
flag indicating the calculation of KL divergence between prior and posterior | |
bool | posteriorStatsMutual |
flag indicating the calculation of mutual information between prior and posterior | |
bool | posteriorStatsKDE |
flag indicating the calculation of the kernel density estimate of the posteriors | |
bool | chainDiagnostics |
flag indicating calculation of chain diagnostics | |
bool | chainDiagnosticsCI |
flag indicating calculation of confidence intervals as a chain diagnositc | |
bool | calModelEvidence |
flag indicating calculation of the evidence of the model | |
bool | calModelEvidMC |
flag indicating use of Monte Carlo approximation to calculate evidence | |
bool | calModelEvidLaplace |
flag indicating use of Laplace approximation to calculate evidence | |
int | evidenceSamples |
number of samples to be used in model evidence calculation | |
bool | adaptPosteriorRefine |
flag indicating usage of adaptive posterior refinement; currently makes sense for unstructured grids in GP and PCE least squares/CS | |
String | proposalCovarType |
approach for defining proposal covariance | |
RealVector | proposalCovarData |
data from user input of proposal covariance | |
String | proposalCovarFilename |
filename for user-specified proposal covariance | |
String | proposalCovarInputType |
approach for defining proposal covariance | |
RealMatrix | acceptanceChain |
Post-processing-related controls. More... | |
RealMatrix | acceptedFnVals |
cached function values corresponding to acceptanceChain for final statistics reporting | |
std::map< Real, RealVector > | bestSamples |
container for managing best MCMC samples (points and associated log posterior) collected across multiple (restarted) chains | |
int | burnInSamples |
number of MCMC samples to discard from acceptance chain | |
int | subSamplingPeriod |
period or skip in post-processing the acceptance chain | |
RealMatrix | chainStats |
RealMatrix | fnStats |
RealMatrix | predVals |
Compute credibility and prediction intervals of final chain. | |
RealMatrix | filteredFnVals |
cached filtered function values for printing (may be a view of acceptedFnVals) | |
String | exportMCMCFilename |
output filename for the MCMC chain | |
short | exportMCMCFormat |
output formatting options for MCMC export | |
short | filteredMCMCFormat |
Real | kl_est |
bool | scaleFlag |
whether response scaling is active | |
bool | weightFlag |
whether weight scaling is active | |
Protected Attributes inherited from NonDCalibration | |
bool | calibrationData |
flag indicating whether there is calibration data present | |
ExperimentData | expData |
Container for experimental data to which to calibrate model. | |
Protected Attributes inherited from NonD | |
NonD * | prevNondInstance |
pointer containing previous value of nondInstance | |
size_t | startCAUV |
starting index of continuous aleatory uncertain variables within active continuous variables (convenience for managing offsets) | |
size_t | numCAUV |
number of active continuous aleatory uncertain variables | |
bool | epistemicStats |
flag for computing interval-type metrics instead of integrated metrics If any epistemic vars are active in a metric evaluation, then flag is set. | |
RealMatrix | momentStats |
standardized or central resp moments, as determined by finalMomentsType. Calculated in compute_moments()) and indexed as (moment,fn). | |
RealVectorArray | requestedRespLevels |
requested response levels for all response functions | |
RealVectorArray | computedProbLevels |
output probability levels for all response functions resulting from requestedRespLevels | |
RealVectorArray | computedRelLevels |
output reliability levels for all response functions resulting from requestedRespLevels | |
RealVectorArray | computedGenRelLevels |
output generalized reliability levels for all response functions resulting from requestedRespLevels | |
short | respLevelTarget |
indicates mapping of z->p (PROBABILITIES), z->beta (RELIABILITIES), or z->beta* (GEN_RELIABILITIES) | |
short | respLevelTargetReduce |
indicates component or system series/parallel failure metrics | |
RealVectorArray | requestedProbLevels |
requested probability levels for all response functions | |
RealVectorArray | requestedRelLevels |
requested reliability levels for all response functions | |
RealVectorArray | requestedGenRelLevels |
requested generalized reliability levels for all response functions | |
RealVectorArray | computedRespLevels |
output response levels for all response functions resulting from requestedProbLevels, requestedRelLevels, or requestedGenRelLevels | |
size_t | totalLevelRequests |
total number of levels specified within requestedRespLevels, requestedProbLevels, and requestedRelLevels | |
bool | cdfFlag |
flag for type of probabilities/reliabilities used in mappings: cumulative/CDF (true) or complementary/CCDF (false) | |
bool | pdfOutput |
flag for managing output of response probability density functions (PDFs) | |
RealVectorArray | computedPDFAbscissas |
sorted response PDF intervals bounds extracted from min/max sample and requested/computedRespLevels (vector lengths = num bins + 1) | |
RealVectorArray | computedPDFOrdinates |
response PDF densities computed from bin counts divided by (unequal) bin widths (vector lengths = num bins) | |
Response | finalStatistics |
final statistics from the uncertainty propagation used in strategies: response means, standard deviations, and probabilities of failure | |
short | finalMomentsType |
type of moments logged within finalStatistics: none, central, standard | |
size_t | miPLIndex |
index for the active ParallelLevel within ParallelConfiguration::miPLIters | |
BitArray | pdfComputed |
Whether PDF was computed for function i; used to determine whether a pdf should be archived. | |
Protected Attributes inherited from Analyzer | |
size_t | numFunctions |
number of response functions | |
size_t | numContinuousVars |
number of active continuous vars | |
size_t | numDiscreteIntVars |
number of active discrete integer vars | |
size_t | numDiscreteStringVars |
number of active discrete string vars | |
size_t | numDiscreteRealVars |
number of active discrete real vars | |
bool | compactMode |
switch for allSamples (compact mode) instead of allVariables (normal mode) | |
VariablesArray | allVariables |
array of all variables to be evaluated in evaluate_parameter_sets() | |
RealMatrix | allSamples |
compact alternative to allVariables | |
IntResponseMap | allResponses |
array of all responses to be computed in evaluate_parameter_sets() | |
IntIntVariables2DMap | batchVariablesMap |
alternate container for Variables samples supporting evaluate_batch() and synchronize_batches(), a 2D map with outer batch_id and inner eval_id | |
IntIntRealVector2DMap | batchSamplesMap |
alternate container for RealVector samples supporting evaluate_batch() and synchronize_batches(), a 2D map with outer batch_id and inner eval_id | |
IntIntResponse2DMap | batchResponsesMap |
alternate container for Response samples supporting evaluate_batch() and synchronize_batches(), a 2D map with outer batch_id and inner eval_id | |
StringArray | allHeaders |
array of headers to insert into output while evaluating allVariables | |
size_t | numObjFns |
number of objective functions | |
size_t | numLSqTerms |
number of least squares terms | |
RealPairPRPMultiMap | bestVarsRespMap |
map which stores best set of solutions | |
bool | vbdFlag |
flag indicating the activation of variance-bsaed decomposition for computing Sobol' indices, via either PCE or sampling | |
Real | vbdDropTol |
tolerance for omitting output of small VBD indices computed via either PCE or sampling | |
Protected Attributes inherited from Iterator | |
ProblemDescDB & | probDescDB |
class member reference to the problem description database More... | |
ParallelLibrary & | parallelLib |
class member reference to the parallel library | |
ParConfigLIter | methodPCIter |
the active ParallelConfiguration used by this Iterator instance | |
Model | iteratedModel |
the model to be iterated (for iterators and meta-iterators employing a single model instance) | |
size_t | myModelLayers |
number of Models locally (in Iterator or derived classes) wrapped around the initially passed in Model | |
unsigned short | methodName |
name of the iterator (the user's method spec) | |
Real | convergenceTol |
iteration convergence tolerance | |
size_t | maxIterations |
maximum number of iterations for the method | |
size_t | maxFunctionEvals |
maximum number of fn evaluations for the method | |
int | maxEvalConcurrency |
maximum number of concurrent model evaluations More... | |
ActiveSet | activeSet |
the response data requirements on each function evaluation | |
size_t | numFinalSolutions |
number of solutions to retain in best variables/response arrays | |
VariablesArray | bestVariablesArray |
collection of N best solution variables found during the study; always in context of Model originally passed to the Iterator (any in-flight Recasts must be undone) | |
ResponseArray | bestResponseArray |
collection of N best solution responses found during the study; always in context of Model originally passed to the Iterator (any in-flight Recasts must be undone) | |
bool | subIteratorFlag |
flag indicating if this Iterator is a sub-iterator (NestedModel::subIterator or DataFitSurrModel::daceIterator) | |
short | outputLevel |
output verbosity level: {SILENT,QUIET,NORMAL,VERBOSE,DEBUG}_OUTPUT | |
bool | summaryOutputFlag |
flag for summary output (evaluation stats, final results); default true, but false for on-the-fly (helper) iterators and sub-iterator use cases | |
ResultsManager & | resultsDB |
reference to the global iterator results database | |
EvaluationStore & | evaluationsDB |
reference to the global evaluation database | |
EvaluationsDBState | evaluationsDBState |
State of evaluations DB for this iterator. | |
ResultsNames | resultsNames |
valid names for iterator results | |
std::shared_ptr< TraitsBase > | methodTraits |
pointer that retains shared ownership of a TraitsBase object, or child thereof | |
bool | topLevel |
Whether this is the top level iterator. | |
bool | exportSurrogate = false |
whether to export final surrogates | |
String | surrExportPrefix |
base filename for exported surrogates | |
unsigned short | surrExportFormat = NO_MODEL_FORMAT |
(bitwise) format(s) to export | |
Static Protected Attributes | |
static NonDQUESOBayesCalibration * | nonDQUESOInstance |
Pointer to current class instance for use in static callback functions. | |
Static Protected Attributes inherited from NonDBayesCalibration | |
static NonDBayesCalibration * | nonDBayesInstance |
Pointer to current class instance for use in static callback functions. | |
Static Protected Attributes inherited from NonD | |
static NonD * | nondInstance |
pointer to the active object instance used within static evaluator functions in order to avoid the need for static data | |
Friends | |
class | DerivInformedPropCovTK< QUESO::GslVector, QUESO::GslMatrix > |
Random walk transition kernel needs callback access to QUESO details. | |
class | DerivInformedPropCovLogitTK< QUESO::GslVector, QUESO::GslMatrix > |
Logit random walk transition kernel needs callback access to QUESO details. | |
Additional Inherited Members | |
Static Public Member Functions inherited from NonDBayesCalibration | |
static void | get_positive_definite_covariance_from_hessian (const RealSymMatrix &hessian, const RealMatrix &prior_chol_fact, RealSymMatrix &covariance, short output_lev) |
Compute the proposal covariance C based on low-rank approximation to the prior-preconditioned misfit Hessian. | |
static Real | knn_kl_div (RealMatrix &distX_samples, RealMatrix &distY_samples, size_t dim) |
static Real | knn_mutual_info (RealMatrix &Xmatrix, int dimX, int dimY, unsigned short alg) |
Bayesian inference using the QUESO library from UT Austin.
This class wraps the Quantification of Uncertainty for Estimation, Simulation, and Optimization (QUESO) library, developed as part of the Predictive Science Academic Alliance Program (PSAAP)-funded Predictive Engineering and Computational Sciences (PECOS) Center at UT Austin.
NonDQUESOBayesCalibration | ( | ProblemDescDB & | problem_db, |
Model & | model | ||
) |
standard constructor
This constructor is called for a standard letter-envelope iterator instantiation. In this case, set_db_list_nodes has been called and probDescDB can be queried for settings from the method specification.
References Dakota::abort_handler(), NonDQUESOBayesCalibration::advancedOptionsFile, NonDCalibration::calibrationData, NonDBayesCalibration::chainSamples, NonDBayesCalibration::emulatorType, NonDQUESOBayesCalibration::init_queso_environment(), NonDBayesCalibration::obsErrorMultiplierMode, Iterator::outputLevel, NonDQUESOBayesCalibration::priorPropCovMult, NonDQUESOBayesCalibration::propCovUpdatePeriod, and NonDBayesCalibration::proposalCovarType.
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protectedvirtual |
Perform the uncertainty quantification
Implements NonDBayesCalibration.
References NonDQUESOBayesCalibration::run_chain().
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overrideprotectedvirtual |
print the final iterator results
This virtual function provides additional iterator-specific final results outputs beyond the function evaluation summary printed in finalize_run().
Reimplemented from NonDBayesCalibration.
References NonDBayesCalibration::bestSamples, NonDQUESOBayesCalibration::copy_gsl(), NonDQUESOBayesCalibration::copy_gsl_partial(), NonDCalibration::expData, Dakota::HALF_LOG_2PI, ExperimentData::half_log_cov_determinant(), NonDBayesCalibration::log_prior_density(), Model::num_primary_fns(), Analyzer::numContinuousVars, NonDBayesCalibration::numHyperparams, NonDBayesCalibration::obsErrorMultiplierMode, NonDQUESOBayesCalibration::paramSpace, NonDBayesCalibration::print_results(), NonDBayesCalibration::print_variables(), NonDBayesCalibration::residualModel, and Dakota::write_precision.
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overrideprotectedvirtual |
intialize the QUESO parameter space, min, max, initial, domain, and prior define solver options, likelihood callback, posterior RV, and inverse problem
Initialize the calibration parameter domain (paramSpace, paramMins/paramMaxs, paramDomain, paramInitials, priorRV)
Reimplemented from NonDBayesCalibration.
References NonDQUESOBayesCalibration::copy_gsl(), Model::current_variables(), SharedVariablesData::cv_index_to_all_index(), Iterator::iteratedModel, NonDBayesCalibration::mapSoln, NonDBayesCalibration::mcmcModel, Model::multivariate_distribution(), NonDQUESOBayesCalibration::nonDQUESOInstance, Analyzer::numContinuousVars, NonDBayesCalibration::numHyperparams, Iterator::outputLevel, NonDQUESOBayesCalibration::paramDomain, NonDQUESOBayesCalibration::paramInitials, NonDQUESOBayesCalibration::paramSpace, NonDQUESOBayesCalibration::priorRv, NonDQUESOBayesCalibration::quesoEnv, and Variables::shared_data().
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protected |
cache the chain to acceptanceChain and acceptedFnVals
Populate all of acceptanceChain(num_params, chainSamples) acceptedFnVals(numFunctions, chainSamples)
References Dakota::abort_handler(), NonDBayesCalibration::acceptanceChain, NonDBayesCalibration::acceptedFnVals, Response::active_set(), Model::active_variables(), NonDBayesCalibration::chainSamples, Variables::continuous_variables(), Response::copy(), Variables::copy(), NonDQUESOBayesCalibration::copy_gsl_partial(), Model::current_response(), Model::current_variables(), Dakota::data_pairs, Model::evaluate(), Response::function_values(), Model::interface_id(), NonDQUESOBayesCalibration::inverseProb, Dakota::lookup_by_val(), NonDBayesCalibration::mcmcModel, NonDBayesCalibration::mcmcModelHasSurrogate, Model::model_type(), Analyzer::numContinuousVars, Analyzer::numFunctions, NonDBayesCalibration::numHyperparams, Iterator::outputLevel, NonDQUESOBayesCalibration::postRv, ActiveSet::request_values(), NonDBayesCalibration::standardizedSpace, Model::trans_U_to_X(), and ParamResponsePair::variables().
Referenced by NonDQUESOBayesCalibration::run_chain().
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protected |
use covariance of prior distribution for setting proposal covariance
Must be called after paramMins/paramMaxs set above
References NonDBayesCalibration::mcmcModel, Model::multivariate_distribution(), Analyzer::numContinuousVars, Iterator::outputLevel, NonDQUESOBayesCalibration::priorPropCovMult, NonDQUESOBayesCalibration::proposalCovMatrix, and NonDBayesCalibration::standardizedSpace.
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protected |
Set proposal covariance from user-provided diagonal or matrix.
This function will convert user-specified cov_type = "diagonal" | "matrix" data from either cov_data or cov_filename and populate a full QUESO::GslMatrix* in proposalCovMatrix with the covariance.
References Dakota::length(), Analyzer::numContinuousVars, NonDQUESOBayesCalibration::proposalCovMatrix, and NonDBayesCalibration::standardizedSpace.
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protected |
Set inverse problem options calIpOptionsValues common to all solvers.
set inverse problem options common to all solvers
References NonDQUESOBayesCalibration::advancedOptionsFile, NonDQUESOBayesCalibration::calIpOptionsValues, Iterator::outputLevel, and NonDQUESOBayesCalibration::quesoEnv.
Referenced by NonDGPMSABayesCalibration::init_queso_solver().
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protected |
flag indicating user activation of logit transform option
this option is useful for preventing rejection or resampling for out-of-bounds samples by transforming bounded domains to [-inf,inf].
Referenced by NonDQUESOBayesCalibration::set_mh_options().