927 lines
55 KiB
Matlab
927 lines
55 KiB
Matlab
function [oo_, options_mom_, M_] = method_of_moments(bayestopt_, options_, oo_, estim_params_, M_, options_mom_)
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%function [oo_, options_mom_, M_] = method_of_moments(bayestopt_, options_, oo_, estim_params_, M_, options_mom_)
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% -------------------------------------------------------------------------
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% This function performs a method of moments estimation with the following steps:
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% Step 0: Check if required structures and options exist
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% Step 1: - Prepare options_mom_ structure
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% - Carry over options from the preprocessor
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% - Initialize other options
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% - Get variable orderings and state space representation
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% Step 2: Checks and transformations for matched moments structure
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% Step 3: Checks and transformations for estimated parameters, priors, and bounds
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% Step 4: Checks and transformations for data
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% Step 5: Checks for steady state at initial parameters
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% Step 6: Checks for objective function at initial parameters
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% Step 7: Iterated method of moments estimation
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% Step 8: J-Test
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% Step 9: Clean up
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% -------------------------------------------------------------------------
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% This function is inspired by replication codes accompanied to the following papers:
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% o Andreasen, Fernández-Villaverde, Rubio-Ramírez (2018): "The Pruned State-Space System for Non-Linear DSGE Models: Theory and Empirical Applications", Review of Economic Studies, 85(1):1-49.
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% o Born, Pfeifer (2014): "Risk Matters: Comment", American Economic Review, 104(12):4231-4239.
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% o Mutschler (2018): "Higher-order statistics for DSGE models", Econometrics and Statistics, 6:44-56.
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% =========================================================================
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% INPUTS
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% o bayestopt_: [structure] information about priors
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% o options_: [structure] information about global options
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% o oo_: [structure] storage for results
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% o estim_params_: [structure] information about estimated parameters
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% o M_: [structure] information about model with
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% o matched_moments: [cell] information about selected moments to match in estimation
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% vars: matched_moments{:,1});
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% lead/lags: matched_moments{:,2};
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% powers: matched_moments{:,3};
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% o options_mom_: [structure] information about settings specified by the user
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% -------------------------------------------------------------------------
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% OUTPUTS
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% o oo_: [structure] storage for results (oo_)
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% o options_mom_: [structure] information about all (user-specified and updated) settings used in estimation (options_mom_)
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% -------------------------------------------------------------------------
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% This function is called by
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% o driver.m
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% -------------------------------------------------------------------------
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% This function calls
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% o check_for_calibrated_covariances.m
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% o check_prior_bounds.m
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% o do_parameter_initialization.m
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% o dynare_minimize_objective.m
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% o evaluate_steady_state
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% o get_all_parameters.m
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% o get_matrix_entries_for_psd_check.m
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% o makedataset.m
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% o method_of_moments_check_plot.m
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% o method_of_moments_data_moments.m
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% o method_of_moments_objective_function.m
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% o method_of_moments_optimal_weighting_matrix
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% o method_of_moments_standard_errors
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% o plot_priors.m
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% o print_info.m
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% o prior_bounds.m
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% o set_default_option.m
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% o set_prior.m
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% o set_state_space.m
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% o set_all_parameters.m
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% o test_for_deep_parameters_calibration.m
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% =========================================================================
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% Copyright (C) 2020 Dynare Team
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%
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% This file is part of Dynare.
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%
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% Dynare is free software: you can redistribute it and/or modify
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% it under the terms of the GNU General Public License as published by
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% the Free Software Foundation, either version 3 of the License, or
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% (at your option) any later version.
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%
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% Dynare is distributed in the hope that it will be useful,
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% but WITHOUT ANY WARRANTY; without even the implied warranty of
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% MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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% GNU General Public License for more details.
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%
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% You should have received a copy of the GNU General Public License
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% along with Dynare. If not, see <http://www.gnu.org/licenses/>.
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% -------------------------------------------------------------------------
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% Author(s):
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% o Willi Mutschler (willi@mutschler.eu)
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% o Johannes Pfeifer (jpfeifer@uni-koeln.de)
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% =========================================================================
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%% TO DO LIST
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% - [ ] why does lsqnonlin take less time in Andreasen toolbox?
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% - [ ] test user-specified weightning matrix
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% - [ ] which qz_criterium value?
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% - [ ] document that in method_of_moments_data_moments.m NaN are replaced by mean of moment
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% - [ ] add IRF matching
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% - [ ] test estimated_params_bounds block
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% - [ ] test what happens if all parameters will be estimated but some/all are not calibrated
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% - [ ] speed up lyapunov equation by using doubling with old initial values
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% - [ ] check smm at order > 3 without pruning
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% - [ ] provide option to use analytical derivatives to compute std errors (similar to what we already do in identification)
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% - [ ] add Bayesian GMM/SMM estimation
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% - [ ] useautocorr
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% - [ ] do we need dirname?
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% - [ ] decide on default weighting matrix scheme, I would propose 2 stage with Diagonal of optimal matrix
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% - [ ] check smm with product moments greater than 2
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% -------------------------------------------------------------------------
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% Step 0: Check if required structures and options exist
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% -------------------------------------------------------------------------
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if isempty(estim_params_) % structure storing the info about estimated parameters in the estimated_params block
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if ~(isfield(estim_params_,'nvx') && (size(estim_params_.var_exo,1)+size(estim_params_.var_endo,1)+size(estim_params_.corrx,1)+size(estim_params_.corrn,1)+size(estim_params_.param_vals,1))==0)
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error('method_of_moments: You need to provide an ''estimated_params'' block')
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else
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error('method_of_moments: The ''estimated_params'' block must not be empty')
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end
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end
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if isempty(M_.matched_moments) % structure storing the moments used for the method of moments estimation
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error('method_of_moments: You need to provide a ''matched_moments'' block')
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end
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if ~isempty(bayestopt_) && any(bayestopt_.pshape==0) && any(bayestopt_.pshape~=0)
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error('method_of_moments: Estimation must be either fully classical or fully Bayesian. Maybe you forgot to specify a prior distribution.')
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end
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if options_.logged_steady_state || options_.loglinear
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error('method_of_moments: The loglinear option is not supported. Please append the required logged variables as auxiliary equations.\n')
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else
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options_mom_.logged_steady_state = 0;
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options_mom_.loglinear = false;
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end
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fprintf('\n==== Method of Moments (%s) Estimation ====\n\n',options_mom_.mom.mom_method)
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% -------------------------------------------------------------------------
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% Step 1a: Prepare options_mom_ structure
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% -------------------------------------------------------------------------
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% options_mom_ is local and contains default and user-specified values for
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% all settings needed for the method of moments estimation. Some options,
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% though, are set by the preprocessor into options_ and we copy these over.
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% The idea is to be independent of options_ and have full control of the
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% estimation instead of possibly having to deal with options chosen somewhere
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% else in the mod file.
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% Method of Moments estimation options that can be set by the user in the mod file, otherwise default values are provided
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if strcmp(options_mom_.mom.mom_method,'GMM') || strcmp(options_mom_.mom.mom_method,'SMM')
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options_mom_.mom = set_default_option(options_mom_.mom,'bartlett_kernel_lag',20); % bandwith in optimal weighting matrix
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options_mom_.mom = set_default_option(options_mom_.mom,'penalized_estimator',false); % include deviation from prior mean as additional moment restriction and use prior precision as weight
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options_mom_.mom = set_default_option(options_mom_.mom,'verbose',false); % display and store intermediate estimation results
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options_mom_.mom = set_default_option(options_mom_.mom,'weighting_matrix',{'DIAGONAL'; 'DIAGONAL'}); % weighting matrix in moments distance objective function at each iteration of estimation; cell of strings with
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% possible values are 'OPTIMAL', 'IDENTITY_MATRIX' ,'DIAGONAL' or a filename. Size of cell determines stages in iterated estimation.
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options_mom_.mom = set_default_option(options_mom_.mom,'weighting_matrix_scaling_factor',1); % scaling of weighting matrix
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options_mom_.mom = set_default_option(options_mom_.mom,'se_tolx',1e-5); % step size for numerical computation of standard errors
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options_mom_ = set_default_option(options_mom_,'order',1); % order of Taylor approximation in perturbation
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options_mom_ = set_default_option(options_mom_,'pruning',true); % use pruned state space system at higher-order
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% Checks for perturbation order
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if options_mom_.order < 1
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error('method_of_moments:: The order of the Taylor approximation cannot be 0!')
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end
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end
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if strcmp(options_mom_.mom.mom_method,'SMM')
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options_mom_.mom = set_default_option(options_mom_.mom,'burnin',500); % number of periods dropped at beginning of simulation
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options_mom_.mom = set_default_option(options_mom_.mom,'bounded_shock_support',false); % trim shocks in simulation to +- 2 stdev
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options_mom_.mom = set_default_option(options_mom_.mom,'seed',24051986); % seed used in simulations
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options_mom_.mom = set_default_option(options_mom_.mom,'simulation_multiple',5); % multiple of the data length used for simulation
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if options_mom_.mom.simulation_multiple < 1
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fprintf('The simulation horizon is shorter than the data. Dynare resets the simulation_multiple to 5.\n')
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options_mom_.mom.simulation_multiple = 5;
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end
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end
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if strcmp(options_mom_.mom.mom_method,'GMM')
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% Check for pruning with GMM at higher order
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if options_mom_.order > 1 && ~options_mom_.pruning
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fprintf('GMM at higher order only works with pruning, so we set pruning option to 1.\n');
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options_mom_.pruning = true;
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end
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end
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% General options that can be set by the user in the mod file, otherwise default values are provided
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options_mom_ = set_default_option(options_mom_,'dirname',M_.fname); % directory in which to store estimation output
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options_mom_ = set_default_option(options_mom_,'graph_format','eps'); % specify the file format(s) for graphs saved to disk
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options_mom_ = set_default_option(options_mom_,'nodisplay',false); % do not display the graphs, but still save them to disk
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options_mom_ = set_default_option(options_mom_,'nograph',false); % do not create graphs (which implies that they are not saved to the disk nor displayed)
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options_mom_ = set_default_option(options_mom_,'noprint',false); % do not print output to console
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options_mom_ = set_default_option(options_mom_,'plot_priors',true); % control plotting of priors
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options_mom_ = set_default_option(options_mom_,'prior_trunc',1e-10); % probability of extreme values of the prior density that is ignored when computing bounds for the parameters
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options_mom_ = set_default_option(options_mom_,'TeX',false); % print TeX tables and graphics
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% Data and model options that can be set by the user in the mod file, otherwise default values are provided
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options_mom_ = set_default_option(options_mom_,'first_obs',1); % number of first observation
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options_mom_ = set_default_option(options_mom_,'logdata',false); % if data is already in logs
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options_mom_ = set_default_option(options_mom_,'nobs',NaN); % number of observations
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options_mom_ = set_default_option(options_mom_,'prefilter',false); % demean each data series by its empirical mean and use centered moments
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options_mom_ = set_default_option(options_mom_,'xls_sheet',1); % name of sheet with data in Excel
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options_mom_ = set_default_option(options_mom_,'xls_range',''); % range of data in Excel sheet
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% Recursive estimation and forecast are not supported
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if numel(options_mom_.nobs)>1
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error('method_of_moments: Recursive estimation and forecast for samples is not supported. Please set an integer as ''nobs''.');
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end
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if numel(options_mom_.first_obs)>1
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error('method_of_moments: Recursive estimation and forecast for samples is not supported. Please set an integer as ''first_obs''.');
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end
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% Optimization options that can be set by the user in the mod file, otherwise default values are provided
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options_mom_ = set_default_option(options_mom_,'huge_number',1e7); % value for replacing the infinite bounds on parameters by finite numbers. Used by some optimizers for numerical reasons
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options_mom_ = set_default_option(options_mom_,'mode_compute',13); % specifies the optimizer for minimization of moments distance
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options_mom_ = set_default_option(options_mom_,'additional_optimizer_steps',[]); % vector of additional mode-finders run after mode_compute
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options_mom_ = set_default_option(options_mom_,'optim_opt',[]); % a list of NAME and VALUE pairs to set options for the optimization routines. Available options depend on mode_compute
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options_mom_ = set_default_option(options_mom_,'silent_optimizer',false); % run minimization of moments distance silently without displaying results or saving files in between
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% Check plot options that can be set by the user in the mod file, otherwise default values are provided
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options_mom_.mode_check.nolik = false; % we don't do likelihood (also this initializes mode_check substructure)
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options_mom_.mode_check = set_default_option(options_mom_.mode_check,'status',false); % plot the target function for values around the computed minimum for each estimated parameter in turn. This is helpful to diagnose problems with the optimizer.
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options_mom_.mode_check = set_default_option(options_mom_.mode_check,'neighbourhood_size',.5); % width of the window around the computed minimum to be displayed on the diagnostic plots. This width is expressed in percentage deviation. The Inf value is allowed, and will trigger a plot over the entire domain
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options_mom_.mode_check = set_default_option(options_mom_.mode_check,'symmetric_plots',true); % ensure that the check plots are symmetric around the minimum. A value of 0 allows to have asymmetric plots, which can be useful if the minimum is close to a domain boundary, or in conjunction with neighbourhood_size = Inf when the domain is not the entire real line
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options_mom_.mode_check = set_default_option(options_mom_.mode_check,'number_of_points',20); % number of points around the minimum where the target function is evaluated (for each parameter)
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% Numerical algorithms options that can be set by the user in the mod file, otherwise default values are provided
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options_mom_ = set_default_option(options_mom_,'aim_solver',false); % use AIM algorithm to compute perturbation approximation instead of mjdgges
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options_mom_ = set_default_option(options_mom_,'k_order_solver',false); % use k_order_perturbation instead of mjdgges
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options_mom_ = set_default_option(options_mom_,'dr_cycle_reduction',false); % use cycle reduction algorithm to solve the polynomial equation for retrieving the coefficients associated to the endogenous variables in the decision rule
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options_mom_ = set_default_option(options_mom_,'dr_cycle_reduction_tol',1e-7); % convergence criterion used in the cycle reduction algorithm
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options_mom_ = set_default_option(options_mom_,'dr_logarithmic_reduction',false); % use logarithmic reduction algorithm to solve the polynomial equation for retrieving the coefficients associated to the endogenous variables in the decision rule
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options_mom_ = set_default_option(options_mom_,'dr_logarithmic_reduction_maxiter',100); % maximum number of iterations used in the logarithmic reduction algorithm
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options_mom_ = set_default_option(options_mom_,'dr_logarithmic_reduction_tol',1e-12); % convergence criterion used in the cycle reduction algorithm
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options_mom_ = set_default_option(options_mom_,'lyapunov_db',false); % doubling algorithm (disclyap_fast) to solve Lyapunov equation to compute variance-covariance matrix of state variables
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options_mom_ = set_default_option(options_mom_,'lyapunov_fp',false); % fixed-point algorithm to solve Lyapunov equation to compute variance-covariance matrix of state variables
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options_mom_ = set_default_option(options_mom_,'lyapunov_srs',false); % square-root-solver (dlyapchol) algorithm to solve Lyapunov equation to compute variance-covariance matrix of state variables
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options_mom_ = set_default_option(options_mom_,'lyapunov_complex_threshold',1e-15); % complex block threshold for the upper triangular matrix in symmetric Lyapunov equation solver
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options_mom_ = set_default_option(options_mom_,'lyapunov_fixed_point_tol',1e-10); % convergence criterion used in the fixed point Lyapunov solver
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options_mom_ = set_default_option(options_mom_,'lyapunov_doubling_tol',1e-16); % convergence criterion used in the doubling algorithm
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options_mom_ = set_default_option(options_mom_,'sylvester_fp',false); % determines whether to use fixed point algorihtm to solve Sylvester equation (gensylv_fp), faster for large scale models
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options_mom_ = set_default_option(options_mom_,'sylvester_fixed_point_tol',1e-12); % convergence criterion used in the fixed point Sylvester solver
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options_mom_ = set_default_option(options_mom_,'qz_criterium',1-1e-6); % value used to split stable from unstable eigenvalues in reordering the Generalized Schur decomposition used for solving first order problems [IS THIS CORRET @wmutschl]
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options_mom_ = set_default_option(options_mom_,'qz_zero_threshold',1e-6); % value used to test if a generalized eigenvalue is 0/0 in the generalized Schur decomposition
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if options_mom_.order > 2
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fprintf('Dynare will use ''k_order_solver'' as the order>2\n');
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options_mom_.k_order_solver = true;
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end
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% -------------------------------------------------------------------------
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% Step 1b: Options that are set by the preprocessor and need to be carried over
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% -------------------------------------------------------------------------
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% options related to VAROBS
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if ~isfield(options_,'varobs')
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error('method_of_moments: VAROBS statement is missing!')
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else
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options_mom_.varobs = options_.varobs; % observable variables in declaration order
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options_mom_.obs_nbr = length(options_mom_.varobs); % number of observed variables
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% Check that each declared observed variable is also an endogenous variable
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for i = 1:options_mom_.obs_nbr
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if ~any(strcmp(options_mom_.varobs{i},M_.endo_names))
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error(['method_of_moments: Unknown variable (' options_mom_.varobs{i} ')!'])
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end
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end
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% Check that a variable is not declared as observed more than once
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if length(unique(options_mom_.varobs))<length(options_mom_.varobs)
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for i = 1:options_mom_.obs_nbr
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if sum(strcmp(options_mom_.varobs{i},options_mom_.varobs))>1
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error(['method_of_moments: A variable cannot be declared as observed more than once (' options_mom_.varobs{i} ')!'])
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end
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end
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end
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end
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% options related to variable declarations
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if isfield(options_,'trend_coeffs')
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error('method_of_moments: %s does not allow for trend in data',options_mom_.mom.mom_method)
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end
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% options related to estimated_params and estimated_params_init
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options_mom_.use_calibration_initialization = options_.use_calibration_initialization;
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% options related to model block
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options_mom_.linear = options_.linear;
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options_mom_.use_dll = options_.use_dll;
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options_mom_.block = options_.block;
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options_mom_.bytecode = options_.bytecode;
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% options related to steady command
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options_mom_.homotopy_force_continue = options_.homotopy_force_continue;
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options_mom_.homotopy_mode = options_.homotopy_mode;
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options_mom_.homotopy_steps = options_.homotopy_steps;
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options_mom_.markowitz = options_.markowitz;
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options_mom_.solve_algo = options_.solve_algo;
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options_mom_.solve_tolf = options_.solve_tolf;
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options_mom_.solve_tolx = options_.solve_tolx;
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options_mom_.steady = options_.steady;
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options_mom_.steadystate = options_.steadystate;
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options_mom_.steadystate_flag = options_.steadystate_flag;
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% options related to dataset
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options_mom_.dataset = options_.dataset;
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options_mom_.initial_period = options_.initial_period;
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% options related to endogenous prior restrictions are not supported
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options_mom_.endogenous_prior_restrictions.irf = {};
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options_mom_.endogenous_prior_restrictions.moment = {};
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if ~isempty(options_.endogenous_prior_restrictions.irf) && ~isempty(options_.endogenous_prior_restrictions.moment)
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fprintf('Endogenous prior restrictions are not supported yet and will be skipped.\n')
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end
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% -------------------------------------------------------------------------
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% Step 1c: Options related to optimizers
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% -------------------------------------------------------------------------
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% mode_compute = 1, 3, 7, 11, 102, 11, 13
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% nothing to be done
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% mode_compute = 2
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options_mom_.saopt = options_.saopt;
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% mode_compute = 4
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options_mom_.csminwel = options_.csminwel;
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% mode_compute = 5
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options_mom_.newrat = options_.newrat;
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options_mom_.gstep = options_.gstep;
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% mode_compute = 6
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options_mom_.gmhmaxlik = options_.gmhmaxlik;
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options_mom_.mh_jscale = options_.mh_jscale;
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% mode_compute = 8
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options_mom_.simplex = options_.simplex;
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% mode_compute = 9
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options_mom_.cmaes = options_.cmaes;
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% mode_compute = 10
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options_mom_.simpsa = options_.simpsa;
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% mode_compute = 12
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options_mom_.particleswarm = options_.particleswarm;
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% mode_compute = 101
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options_mom_.solveopt = options_.solveopt;
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options_mom_.gradient_method = options_.gradient_method;
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options_mom_.gradient_epsilon = options_.gradient_epsilon;
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options_mom_.analytic_derivation = 0;
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options_mom_.vector_output= false; % specifies whether the objective function returns a vector
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% -------------------------------------------------------------------------
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% Step 1d: Other options that need to be initialized
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% -------------------------------------------------------------------------
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options_mom_.initialize_estimated_parameters_with_the_prior_mode = 0; % needed by set_prior.m
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options_mom_.figures.textwidth = 0.8; %needed by plot_priors.m
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options_mom_.ramsey_policy = 0; % needed by evaluate_steady_state
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options_mom_.debug = false; %needed by resol.m
|
|
options_mom_.risky_steadystate = false; %needed by resol
|
|
options_mom_.threads = options_.threads; %needed by resol
|
|
options_mom_.jacobian_flag = true;
|
|
options_mom_.gstep = options_.gstep;
|
|
|
|
% options_mom.dsge_var = false; %needed by check_list_of_variables
|
|
% options_mom.bayesian_irf = false; %needed by check_list_of_variables
|
|
% options_mom.moments_varendo = false; %needed by check_list_of_variables
|
|
% options_mom.smoother = false; %needed by check_list_of_variables
|
|
% options_mom.filter_step_ahead = []; %needed by check_list_of_variables
|
|
% options_mom.forecast = 0;
|
|
%options_mom_ = set_default_option(options_mom_,'endo_vars_for_moment_computations_in_estimation',[]);
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 1e: Get variable orderings and state space representation
|
|
% -------------------------------------------------------------------------
|
|
oo_.dr = set_state_space(oo_.dr,M_,options_mom_);
|
|
% Get index of observed variables in DR order
|
|
oo_.dr.obs_var = [];
|
|
for i=1:options_mom_.obs_nbr
|
|
oo_.dr.obs_var = [oo_.dr.obs_var; find(strcmp(options_mom_.varobs{i}, M_.endo_names(oo_.dr.order_var)))];
|
|
end
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 2: Checks and transformations for matched moments structure (preliminary)
|
|
% -------------------------------------------------------------------------
|
|
% Note that we do not have a preprocessor interface yet for this, so this
|
|
% will need much improvement later on. @wmutschl
|
|
|
|
% Initialize indices
|
|
options_mom_.mom.index.E_y = false(options_mom_.obs_nbr,1); %unconditional first order product moments
|
|
options_mom_.mom.index.E_yy = false(options_mom_.obs_nbr,options_mom_.obs_nbr); %unconditional second order product moments
|
|
options_mom_.mom.index.E_yyt = false(options_mom_.obs_nbr,options_mom_.obs_nbr,0); %unconditional temporal second order product moments
|
|
options_mom_.mom.index.E_y_pos = zeros(options_mom_.obs_nbr,1); %position in matched moments block
|
|
options_mom_.mom.index.E_yy_pos = zeros(options_mom_.obs_nbr,options_mom_.obs_nbr); %position in matched moments block
|
|
options_mom_.mom.index.E_yyt_pos = zeros(options_mom_.obs_nbr,options_mom_.obs_nbr,0); %position in matched moments block
|
|
|
|
for jm=1:size(M_.matched_moments,1)
|
|
% higher-order product moments not supported yet for GMM
|
|
if strcmp(options_mom_.mom.mom_method, 'GMM') && sum(M_.matched_moments{jm,3}) > 2
|
|
error('method_of_moments: GMM does not yet support product moments higher than 2. Change row %d in ''matched_moments'' block.',jm);
|
|
end
|
|
% Check if declared variables are also observed (needed as otherwise the dataset variables won't coincide)
|
|
if any(~ismember(oo_.dr.inv_order_var(M_.matched_moments{jm,1})', oo_.dr.obs_var))
|
|
error('method_of_moments: Variables in row %d in ''matched_moments'' block need to be declared as VAROBS.', jm)
|
|
end
|
|
|
|
if strcmp(options_mom_.mom.mom_method, 'GMM')
|
|
% Check (for now) that only lags are declared
|
|
if any(M_.matched_moments{jm,2}>0)
|
|
error('method_of_moments: Leads in row %d in the ''matched_moments'' block are not supported for GMM, shift the moments and declare only lags.', jm)
|
|
end
|
|
% Check (for now) that first declared variable has zero lag
|
|
if M_.matched_moments{jm,2}(1)~=0
|
|
error('method_of_moments: The first variable declared in row %d in the ''matched_moments'' block is not allowed to have a lead or lag for GMM;\n reorder the variables in the row such that the first variable has zero lag!',jm)
|
|
end
|
|
end
|
|
vars = oo_.dr.inv_order_var(M_.matched_moments{jm,1})';
|
|
if sum(M_.matched_moments{jm,3}) == 1
|
|
% First-order product moment
|
|
vpos = (oo_.dr.obs_var == vars);
|
|
options_mom_.mom.index.E_y(vpos,1) = true;
|
|
options_mom_.mom.index.E_y_pos(vpos,1) = jm;
|
|
M_.matched_moments{jm,4}=['E(',M_.endo_names{M_.matched_moments{jm,1}},')'];
|
|
M_.matched_moments{jm,5}=['$E(',M_.endo_names_tex{M_.matched_moments{jm,1}},')$'];
|
|
elseif sum(M_.matched_moments{jm,3}) == 2
|
|
% Second-order product moment
|
|
idx1 = (oo_.dr.obs_var == vars(1));
|
|
idx2 = (oo_.dr.obs_var == vars(2));
|
|
lag1 = M_.matched_moments{jm,2}(1);
|
|
lag2 = M_.matched_moments{jm,2}(2);
|
|
if lag1==0 && lag2==0 % contemporaneous covariance matrix
|
|
options_mom_.mom.index.E_yy(idx1,idx2) = true;
|
|
options_mom_.mom.index.E_yy(idx2,idx1) = true;
|
|
options_mom_.mom.index.E_yy_pos(idx1,idx2) = jm;
|
|
options_mom_.mom.index.E_yy_pos(idx2,idx1) = jm;
|
|
M_.matched_moments{jm,4}=['E(',M_.endo_names{M_.matched_moments{jm,1}(1)},',',M_.endo_names{M_.matched_moments{jm,1}(2)},')'];
|
|
M_.matched_moments{jm,5}=['$E({',M_.endo_names_tex{M_.matched_moments{jm,1}(1)},'}_t,{',M_.endo_names_tex{M_.matched_moments{jm,1}(1)},'}_t)$'];
|
|
elseif lag1==0 && lag2 < 0
|
|
options_mom_.mom.index.E_yyt(idx1,idx2,-lag2) = true;
|
|
options_mom_.mom.index.E_yyt_pos(idx1,idx2,-lag2) = jm;
|
|
M_.matched_moments{jm,4}=['E(',M_.endo_names{M_.matched_moments{jm,1}(1)},',',M_.endo_names{M_.matched_moments{jm,1}(2)},'(',num2str(lag2),'))'];
|
|
M_.matched_moments{jm,5}=['$E({',M_.endo_names_tex{M_.matched_moments{jm,1}(1)},'}_t\times{',M_.endo_names_tex{M_.matched_moments{jm,1}(1)},'_{t',num2str(lag2) ,'})$'];
|
|
end
|
|
end
|
|
end
|
|
|
|
|
|
% @wmutschl: add check for duplicate moments by using the cellfun and unique functions
|
|
%Remove duplicate elements
|
|
UniqueMomIdx = [nonzeros(options_mom_.mom.index.E_y_pos); nonzeros(tril(options_mom_.mom.index.E_yy_pos)); nonzeros(options_mom_.mom.index.E_yyt_pos)];
|
|
DuplicateMoms = setdiff(1:size(M_.matched_moments,1),UniqueMomIdx);
|
|
if ~isempty(DuplicateMoms)
|
|
fprintf('Found and removed duplicate declared moments in ''matched_moments'' block in rows: %s.\n',num2str(DuplicateMoms))
|
|
end
|
|
%reorder M_.matched_moments to be compatible with options_mom_.mom.index
|
|
M_.matched_moments = M_.matched_moments(UniqueMomIdx,:);
|
|
if strcmp(options_mom_.mom.mom_method,'SMM')
|
|
options_mom_.mom=rmfield(options_mom_.mom,'index');
|
|
end
|
|
|
|
% Check if both prefilter and first moments were specified
|
|
options_mom_.mom.first_moment_indicator = find(cellfun(@(x) sum(abs(x))==1,M_.matched_moments(:,3)))';
|
|
if options_mom_.prefilter && ~isempty(options_mom_.mom.first_moment_indicator)
|
|
fprintf('Centered moments requested (prefilter option is set); therefore, ignore declared first moments in ''matched_moments'' block in rows: %u.\n',options_mom_.mom.first_moment_indicator');
|
|
M_.matched_moments(options_mom_.mom.first_moment_indicator,:)=[]; %remove first moments entries
|
|
options_mom_.mom.first_moment_indicator = [];
|
|
end
|
|
options_mom_.mom.mom_nbr = size(M_.matched_moments,1);
|
|
|
|
% Get maximum lag number for autocovariances/autocorrelations
|
|
options_mom_.ar = max(cellfun(@max,M_.matched_moments(:,2))) - min(cellfun(@min,M_.matched_moments(:,2)));
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 3: Checks and transformations for estimated parameters, priors, and bounds
|
|
% -------------------------------------------------------------------------
|
|
|
|
% Set priors and bounds over the estimated parameters
|
|
[xparam0, estim_params_, bayestopt_, lb, ub, M_] = set_prior(estim_params_, M_, options_mom_);
|
|
|
|
% Check measurement errors
|
|
if (estim_params_.nvn || estim_params_.ncn) && strcmp(options_mom_.mom.mom_method, 'GMM')
|
|
error('method_of_moments: GMM estimation does not support measurement error(s) yet. Please specifiy them as a structural shock.')
|
|
end
|
|
|
|
% Check if enough moments for estimation
|
|
if options_mom_.mom.mom_nbr < length(xparam0)
|
|
fprintf('\n');
|
|
error('method_of_moments: We must have at least as many moments as parameters for a method of moments estimation.')
|
|
end
|
|
fprintf('\n\n')
|
|
|
|
% Check if a _prior_restrictions.m file exists
|
|
if exist([M_.fname '_prior_restrictions.m'],'file')
|
|
options_mom_.prior_restrictions.status = 1;
|
|
options_mom_.prior_restrictions.routine = str2func([M_.fname '_prior_restrictions']);
|
|
end
|
|
|
|
bayestopt_laplace=bayestopt_;
|
|
|
|
% Check on specified priors and penalized estimation
|
|
if any(bayestopt_laplace.pshape > 0) % prior specified, not ML
|
|
if ~options_mom_.mom.penalized_estimator
|
|
fprintf('\nPriors were specified, but the penalized_estimator-option was not set.\n')
|
|
fprintf('Dynare sets penalized_estimator to 1. Conducting %s with penalty.\n',options_mom_.mom.mom_method)
|
|
options_mom_.mom.penalized_estimator=1;
|
|
end
|
|
if any(setdiff([0;bayestopt_laplace.pshape],[0,3]))
|
|
fprintf('\nNon-normal priors specified. %s with penalty uses a Laplace type of approximation.\n',options_mom_.mom.mom_method)
|
|
fprintf('Only the prior mean and standard deviation are relevant, all other shape information, except for the parameter bounds, is ignored.\n\n')
|
|
non_normal_priors=bayestopt_laplace.pshape~=3;
|
|
bayestopt_laplace.pshape(non_normal_priors) = 3;
|
|
bayestopt_laplace.p3(non_normal_priors) = -Inf*ones(sum(non_normal_priors),1);
|
|
bayestopt_laplace.p4(non_normal_priors) = Inf*ones(sum(non_normal_priors),1);
|
|
bayestopt_laplace.p6(non_normal_priors) = bayestopt_laplace.p1(non_normal_priors);
|
|
bayestopt_laplace.p7(non_normal_priors) = bayestopt_laplace.p2(non_normal_priors);
|
|
bayestopt_laplace.p5(non_normal_priors) = bayestopt_laplace.p1(non_normal_priors);
|
|
end
|
|
if any(isinf(bayestopt_laplace.p2)) %find infinite variance priors
|
|
inf_var_pars=bayestopt_laplace.name(isinf(bayestopt_laplace.p2));
|
|
disp_string=[inf_var_pars{1,:}];
|
|
for ii=2:size(inf_var_pars,1)
|
|
disp_string=[disp_string,', ',inf_var_pars{ii,:}];
|
|
end
|
|
fprintf('The parameter(s) %s have infinite prior variance. This implies a flat prior\n',disp_string)
|
|
fprintf('Dynare disables the matrix singularity warning\n')
|
|
if isoctave
|
|
warning('off','Octave:singular-matrix');
|
|
else
|
|
warning('off','MATLAB:singularMatrix');
|
|
end
|
|
end
|
|
end
|
|
|
|
% Check for calibrated covariances before updating parameters
|
|
estim_params_ = check_for_calibrated_covariances(xparam0,estim_params_,M_);
|
|
|
|
% Checks on parameter calibration and initialization
|
|
xparam1_calib = get_all_parameters(estim_params_,M_); %get calibrated parameters
|
|
if ~any(isnan(xparam1_calib)) %all estimated parameters are calibrated
|
|
estim_params_.full_calibration_detected=1;
|
|
else
|
|
estim_params_.full_calibration_detected=0;
|
|
end
|
|
if options_mom_.use_calibration_initialization %set calibration as starting values
|
|
if ~isempty(bayestopt_laplace) && all(bayestopt_laplace.pshape==0) && any(all(isnan([xparam1_calib xparam0]),2))
|
|
error('method_of_moments: When using the use_calibration option with %s without prior, the parameters must be explicitly initialized.',options_mom_.mom.mom_method)
|
|
else
|
|
[xparam0,estim_params_]=do_parameter_initialization(estim_params_,xparam1_calib,xparam0); %get explicitly initialized parameters that have precedence over calibrated values
|
|
end
|
|
end
|
|
|
|
% Check initialization
|
|
if ~isempty(bayestopt_laplace) && all(bayestopt_laplace.pshape==0) && any(isnan(xparam0))
|
|
error('method_of_moments: %s without penalty requires all estimated parameters to be initialized, either in an estimated_params or estimated_params_init-block ',options_mom_.mom.mom_method)
|
|
end
|
|
|
|
% Set and check parameter bounds
|
|
if ~isempty(bayestopt_laplace) && any(bayestopt_laplace.pshape > 0)
|
|
% Plot prior densities
|
|
if ~options_mom_.nograph && options_mom_.plot_priors
|
|
plot_priors(bayestopt_,M_,estim_params_,options_mom_)
|
|
plot_priors(bayestopt_laplace,M_,estim_params_,options_mom_,'Laplace approximated priors')
|
|
end
|
|
% Set prior bounds
|
|
Bounds = prior_bounds(bayestopt_laplace, options_mom_.prior_trunc);
|
|
Bounds.lb = max(Bounds.lb,lb);
|
|
Bounds.ub = min(Bounds.ub,ub);
|
|
else % estimated parameters but no declared priors
|
|
% No priors are declared so Dynare will estimate the parameters
|
|
% with inequality constraints for the parameters.
|
|
Bounds.lb = lb;
|
|
Bounds.ub = ub;
|
|
if options_mom_.mom.penalized_estimator
|
|
fprintf('Penalized estimation turned off as you did not declare priors\n')
|
|
options_mom_.mom.penalized_estimator = 0;
|
|
end
|
|
end
|
|
% Set correct bounds for standard deviations and corrrelations
|
|
param_of_interest=(1:length(xparam0))'<=estim_params_.nvx+estim_params_.nvn;
|
|
LB_below_0=(Bounds.lb<0 & param_of_interest);
|
|
Bounds.lb(LB_below_0)=0;
|
|
param_of_interest=(1:length(xparam0))'> estim_params_.nvx+estim_params_.nvn & (1:length(xparam0))'<estim_params_.nvx+estim_params_.nvn +estim_params_.ncx + estim_params_.ncn;
|
|
LB_below_minus_1=(Bounds.lb<-1 & param_of_interest);
|
|
UB_above_1=(Bounds.ub>1 & param_of_interest);
|
|
Bounds.lb(LB_below_minus_1)=-1;
|
|
Bounds.ub(UB_above_1)=1;
|
|
|
|
clear('bayestopt_','LB_below_0','LB_below_minus_1','UB_above_1','param_of_interest');%make sure stale structure cannot be used
|
|
|
|
% Test if initial values of the estimated parameters are all between the prior lower and upper bounds
|
|
if options_mom_.use_calibration_initialization
|
|
try
|
|
check_prior_bounds(xparam0,Bounds,M_,estim_params_,options_mom_,bayestopt_laplace)
|
|
catch last_error
|
|
fprintf('Cannot use parameter values from calibration as they violate the prior bounds.')
|
|
rethrow(last_error);
|
|
end
|
|
else
|
|
check_prior_bounds(xparam0,Bounds,M_,estim_params_,options_mom_,bayestopt_laplace)
|
|
end
|
|
|
|
estim_params_= get_matrix_entries_for_psd_check(M_,estim_params_);
|
|
|
|
% Set sigma_e_is_diagonal flag (needed if the shocks block is not declared in the mod file).
|
|
M_.sigma_e_is_diagonal = true;
|
|
if estim_params_.ncx || any(nnz(tril(M_.Correlation_matrix,-1))) || isfield(estim_params_,'calibrated_covariances')
|
|
M_.sigma_e_is_diagonal = false;
|
|
end
|
|
|
|
% storing prior parameters in MoM info structure for penalized minimization
|
|
oo_.prior.mean = bayestopt_laplace.p1;
|
|
oo_.prior.variance = diag(bayestopt_laplace.p2.^2);
|
|
|
|
% Set all parameters
|
|
M_ = set_all_parameters(xparam0,estim_params_,M_);
|
|
|
|
%provide warning if there is NaN in parameters
|
|
test_for_deep_parameters_calibration(M_);
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 4: Checks and transformations for data
|
|
% -------------------------------------------------------------------------
|
|
|
|
% Check if datafile has same name as mod file
|
|
[~,name,~] = fileparts(options_mom_.datafile);
|
|
if strcmp(name,M_.fname)
|
|
error('method_of_moments: Data-file and mod-file are not allowed to have the same name. Please change the name of the data file.')
|
|
end
|
|
|
|
% Build dataset
|
|
dataset_ = makedataset(options_mom_);
|
|
|
|
% set options for old interface from the ones for new interface
|
|
if ~isempty(dataset_)
|
|
options_mom_.nobs = dataset_.nobs;
|
|
end
|
|
|
|
% provide info on missing observations
|
|
if any(any(isnan(dataset_.data)))
|
|
fprintf('missing observations will be replaced by the sample mean of the corresponding moment')
|
|
end
|
|
|
|
% Check length of data for estimation of second moments
|
|
if options_mom_.ar > options_mom_.nobs+1
|
|
error('method_of_moments: Data set is too short to compute second moments');
|
|
end
|
|
|
|
% Get data moments for the method of moments
|
|
[oo_.mom.data_moments, oo_.mom.m_data] = method_of_moments_data_moments(dataset_.data, oo_, M_.matched_moments, options_mom_);
|
|
|
|
% Get shock series for SMM and set variance correction factor
|
|
if strcmp(options_mom_.mom.mom_method,'SMM')
|
|
options_mom_.mom.long = round(options_mom_.mom.simulation_multiple*options_mom_.nobs);
|
|
options_mom_.mom.variance_correction_factor = (1+1/options_mom_.mom.simulation_multiple);
|
|
% draw shocks for SMM
|
|
if ~isoctave
|
|
smmstream = RandStream('mt19937ar','Seed',options_mom_.mom.seed);
|
|
temp_shocks = randn(smmstream,options_mom_.mom.long+options_mom_.mom.burnin,M_.exo_nbr);
|
|
temp_shocks_ME = randn(smmstream,options_mom_.mom.long,length(M_.H));
|
|
else
|
|
[state_u,state_n] = get_dynare_random_generator_state; %get state for later resetting
|
|
set_dynare_random_generator_state(options_mom_.mom.seed,options_mom_.mom.seed);
|
|
temp_shocks = randn(options_mom_.mom.long+options_mom_.mom.burnin,M_.exo_nbr);
|
|
temp_shocks_ME = randn(options_mom_.mom.long,length(M_.H));
|
|
set_dynare_random_generator_state(state_u,state_n); %reset state for later resetting
|
|
end
|
|
if options_mom_.mom.bounded_shock_support == 1
|
|
temp_shocks(temp_shocks>2) = 2;
|
|
temp_shocks(temp_shocks<-2) = -2;
|
|
temp_shocks_ME(temp_shocks_ME<-2) = -2;
|
|
temp_shocks_ME(temp_shocks_ME<-2) = -2;
|
|
end
|
|
options_mom_.mom.shock_series = temp_shocks;
|
|
options_mom_.mom.ME_shock_series = temp_shocks_ME;
|
|
end
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 5: checks for steady state at initial parameters
|
|
% -------------------------------------------------------------------------
|
|
|
|
% setting steadystate_check_flag option
|
|
if options_mom_.steadystate.nocheck
|
|
steadystate_check_flag = 0;
|
|
else
|
|
steadystate_check_flag = 1;
|
|
end
|
|
|
|
old_steady_params=M_.params; %save initial parameters for check if steady state changes param values
|
|
% Check steady state at initial model parameter values
|
|
[oo_.steady_state, new_steady_params, info] = evaluate_steady_state(oo_.steady_state,M_,options_mom_,oo_,steadystate_check_flag);
|
|
if info(1)
|
|
fprintf('\nmethod_of_moments: The steady state at the initial parameters cannot be computed.\n')
|
|
print_info(info, 0, options_mom_);
|
|
end
|
|
|
|
% check whether steady state file changes estimated parameters
|
|
if isfield(estim_params_,'param_vals') && ~isempty(estim_params_.param_vals)
|
|
Model_par_varied=M_; %store M_ structure
|
|
|
|
Model_par_varied.params(estim_params_.param_vals(:,1))=Model_par_varied.params(estim_params_.param_vals(:,1))*1.01; %vary parameters
|
|
[~, new_steady_params_2] = evaluate_steady_state(oo_.steady_state,Model_par_varied,options_mom_,oo_,1);
|
|
|
|
changed_par_indices=find((old_steady_params(estim_params_.param_vals(:,1))-new_steady_params(estim_params_.param_vals(:,1))) ...
|
|
| (Model_par_varied.params(estim_params_.param_vals(:,1))-new_steady_params_2(estim_params_.param_vals(:,1))));
|
|
|
|
if ~isempty(changed_par_indices)
|
|
fprintf('\nThe steady state file internally changed the values of the following estimated parameters:\n')
|
|
disp(char(M_.param_names(estim_params_.param_vals(changed_par_indices,1))))
|
|
fprintf('This will override parameter values and may lead to wrong results.\n')
|
|
fprintf('Check whether this is really intended.\n')
|
|
warning('The steady state file internally changes the values of the estimated parameters.')
|
|
end
|
|
end
|
|
|
|
% display warning if some parameters are still NaN
|
|
test_for_deep_parameters_calibration(M_);
|
|
|
|
% If steady state of observed variables is non zero, set noconstant equal 0
|
|
if all(abs(oo_.steady_state(oo_.dr.order_var(oo_.dr.obs_var)))<1e-9)
|
|
options_mom_.noconstant = 1;
|
|
else
|
|
options_mom_.noconstant = 0;
|
|
end
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 6: checks for objective function at initial parameters
|
|
% -------------------------------------------------------------------------
|
|
objective_function = str2func('method_of_moments_objective_function');
|
|
try
|
|
% Check for NaN or complex values of moment-distance-funtion evaluated
|
|
% at initial parameters and identity weighting matrix
|
|
oo_.mom.Sw = eye(options_mom_.mom.mom_nbr);
|
|
tic_id = tic;
|
|
[fval, info, ~, ~, ~, oo_, M_] = feval(objective_function, xparam0, Bounds, oo_, estim_params_, M_, options_mom_);
|
|
elapsed_time = toc(tic_id);
|
|
if isnan(fval)
|
|
error('method_of_moments: The initial value of the objective function is NaN')
|
|
elseif imag(fval)
|
|
error('method_of_moments: The initial value of the objective function is complex')
|
|
end
|
|
if info(1) > 0
|
|
disp('method_of_moments: Error in computing the objective function for initial parameter values')
|
|
print_info(info, options_mom_.noprint, options_mom_)
|
|
end
|
|
fprintf('Initial value of the moment objective function with %4.1f times identity weighting matrix: %6.4f \n\n', options_mom_.mom.weighting_matrix_scaling_factor, fval);
|
|
fprintf('Time required to compute objective function once: %5.4f seconds \n', elapsed_time);
|
|
|
|
catch last_error% if check fails, provide info on using calibration if present
|
|
if estim_params_.full_calibration_detected %calibrated model present and no explicit starting values
|
|
skipline(1);
|
|
fprintf('There was an error in computing the moments for initial parameter values.\n')
|
|
fprintf('If this is not a problem with the setting of options (check the error message below),\n')
|
|
fprintf('you should try using the calibrated version of the model as starting values. To do\n')
|
|
fprintf('this, add an empty estimated_params_init-block with use_calibration option immediately before the estimation\n')
|
|
fprintf('command (and after the estimated_params-block so that it does not get overwritten):\n');
|
|
skipline(2);
|
|
end
|
|
rethrow(last_error);
|
|
end
|
|
|
|
if options_mom_.mode_compute == 0 %We only report value of moments distance at initial value of the parameters
|
|
fprintf('No minimization of moments distance due to ''mode_compute=0''\n')
|
|
return
|
|
end
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 7a: Method of moments estimation: print some info
|
|
% -------------------------------------------------------------------------
|
|
fprintf('\n---------------------------------------------------\n')
|
|
if strcmp(options_mom_.mom.mom_method,'SMM')
|
|
fprintf('Simulated method of moments with');
|
|
elseif strcmp(options_mom_.mom.mom_method,'GMM')
|
|
fprintf('General method of moments with');
|
|
end
|
|
if options_mom_.prefilter
|
|
fprintf('\n - centered moments (prefilter=1)');
|
|
else
|
|
fprintf('\n - uncentered moments (prefilter=0)');
|
|
end
|
|
if options_mom_.mom.penalized_estimator
|
|
fprintf('\n - penalized estimation using deviation from prior mean and weighted with prior precision');
|
|
end
|
|
if options_mom_.mode_compute == 1; fprintf('\n - optimizer (mode_compute=1): fmincon');
|
|
elseif options_mom_.mode_compute == 2; fprintf('\n - optimizer (mode_compute=2): continuous simulated annealing');
|
|
elseif options_mom_.mode_compute == 3; fprintf('\n - optimizer (mode_compute=3): fminunc');
|
|
elseif options_mom_.mode_compute == 4; fprintf('\n - optimizer (mode_compute=4): csminwel');
|
|
elseif options_mom_.mode_compute == 5; fprintf('\n - optimizer (mode_compute=5): newrat');
|
|
elseif options_mom_.mode_compute == 6; fprintf('\n - optimizer (mode_compute=6): gmhmaxlik');
|
|
elseif options_mom_.mode_compute == 7; fprintf('\n - optimizer (mode_compute=7): fminsearch');
|
|
elseif options_mom_.mode_compute == 8; fprintf('\n - optimizer (mode_compute=8): Dynare Nelder-Mead simplex');
|
|
elseif options_mom_.mode_compute == 9; fprintf('\n - optimizer (mode_compute=9): CMA-ES');
|
|
elseif options_mom_.mode_compute == 10; fprintf('\n - optimizer (mode_compute=10): simpsa');
|
|
elseif options_mom_.mode_compute == 11; fprintf('\n - optimizer (mode_compute=11): online_auxiliary_filter');
|
|
elseif options_mom_.mode_compute == 12; fprintf('\n - optimizer (mode_compute=12): particleswarm');
|
|
elseif options_mom_.mode_compute == 101; fprintf('\n - optimizer (mode_compute=101): SolveOpt');
|
|
elseif options_mom_.mode_compute == 102; fprintf('\n - optimizer (mode_compute=102): simulannealbnd');
|
|
elseif options_mom_.mode_compute == 13; fprintf('\n - optimizer (mode_compute=13): lsqnonlin');
|
|
elseif ischar(minimizer_algorithm); fprintf(['\n - user-defined optimizer: ' minimizer_algorithm]);
|
|
else
|
|
error('method_of_moments: Unknown optimizer, please contact the developers ')
|
|
end
|
|
if options_mom_.silent_optimizer
|
|
fprintf(' (silent)');
|
|
end
|
|
fprintf('\n - perturbation order: %d', options_mom_.order)
|
|
if options_mom_.order > 1 && options_mom_.pruning
|
|
fprintf(' (with pruning)')
|
|
end
|
|
fprintf('\n - number of matched moments: %d', options_mom_.mom.mom_nbr);
|
|
fprintf('\n - number of parameters: %d\n\n', length(xparam0));
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 7b: Iterated method of moments estimation
|
|
% -------------------------------------------------------------------------
|
|
if size(options_mom_.mom.weighting_matrix,1)>1 && ~(any(strcmpi('diagonal',options_mom_.mom.weighting_matrix)) || any(strcmpi('optimal',options_mom_.mom.weighting_matrix)))
|
|
fprintf('\nYou did not specify the use of an optimal or diagonal weighting matrix. There is no point in running an iterated method of moments.\n')
|
|
end
|
|
|
|
optimizer_vec=[options_mom_.mode_compute,options_mom_.additional_optimizer_steps]; % at each stage one can possibly use different optimizers sequentially
|
|
|
|
for stage_iter=1:size(options_mom_.mom.weighting_matrix,1)
|
|
fprintf('Estimation stage %u\n',stage_iter);
|
|
Woptflag = false;
|
|
switch lower(options_mom_.mom.weighting_matrix{stage_iter})
|
|
case 'identity_matrix'
|
|
fprintf(' - identity weighting matrix\n');
|
|
weighting_matrix = eye(options_mom_.mom.mom_nbr);
|
|
case 'diagonal'
|
|
fprintf(' - diagonal of optimal weighting matrix (Bartlett kernel with %d lags)\n', options_mom_.mom.bartlett_kernel_lag);
|
|
if stage_iter == 1
|
|
fprintf(' and using data-moments as initial estimate of model-moments\n');
|
|
weighting_matrix = diag(diag( method_of_moments_optimal_weighting_matrix(oo_.mom.m_data, oo_.mom.data_moments, options_mom_.mom.bartlett_kernel_lag) ));
|
|
else
|
|
fprintf(' and using previous stage estimate of model-moments\n');
|
|
weighting_matrix = diag(diag( method_of_moments_optimal_weighting_matrix(oo_.mom.m_data, oo_.mom.model_moments, options_mom_.mom.bartlett_kernel_lag) ));
|
|
end
|
|
case 'optimal'
|
|
fprintf(' - optimal weighting matrix (Bartlett kernel with %d lags)\n', options_mom_.mom.bartlett_kernel_lag);
|
|
if stage_iter == 1
|
|
fprintf(' and using data-moments as initial estimate of model-moments\n');
|
|
weighting_matrix = method_of_moments_optimal_weighting_matrix(oo_.mom.m_data, oo_.mom.data_moments, options_mom_.mom.bartlett_kernel_lag);
|
|
else
|
|
fprintf(' and using previous stage estimate of model-moments\n');
|
|
weighting_matrix = method_of_moments_optimal_weighting_matrix(oo_.mom.m_data, oo_.mom.model_moments, options_mom_.mom.bartlett_kernel_lag);
|
|
Woptflag = true;
|
|
end
|
|
otherwise %user specified matrix in file
|
|
fprintf(' - user-specified weighting matrix\n');
|
|
try
|
|
load(options_mom_.mom.weighting_matrix{stage_iter},'weighting_matrix')
|
|
catch
|
|
error(['method_of_moments: No matrix named ''weighting_matrix'' could be found in ',options_mom_.mom.weighting_matrix{stage_iter},'.mat'])
|
|
end
|
|
[nrow, ncol] = size(weighting_matrix);
|
|
if ~isequal(nrow,ncol) || ~isequal(nrow,length(oo_.mom.data_moments)) %check if square and right size
|
|
error(['method_of_moments: weighting_matrix must be square and have ',num2str(length(oo_.mom.data_moments)),' rows and columns'])
|
|
end
|
|
end
|
|
try %check for positive definiteness of weighting_matrix
|
|
oo_.mom.Sw = chol(weighting_matrix);
|
|
catch
|
|
error('method_of_moments: Specified weighting_matrix is not positive definite. Check whether your model implies stochastic singularity.')
|
|
end
|
|
|
|
for optim_iter= 1:length(optimizer_vec)
|
|
if optimizer_vec(optim_iter)==13
|
|
options_mom_.vector_output = true;
|
|
else
|
|
options_mom_.vector_output = false;
|
|
end
|
|
[xparam1, fval, exitflag] = dynare_minimize_objective(objective_function, xparam0, optimizer_vec(optim_iter), options_mom_, [Bounds.lb Bounds.ub], bayestopt_laplace.name, bayestopt_laplace, [],...
|
|
Bounds, oo_, estim_params_, M_, options_mom_);
|
|
if options_mom_.vector_output
|
|
fval = fval'*fval;
|
|
end
|
|
fprintf('\nStage %d Iteration %d: value of minimized moment distance objective function: %12.10f.\n',stage_iter,optim_iter,fval)
|
|
if options_mom_.mom.verbose
|
|
oo_.mom=display_estimation_results_table(xparam1,NaN(size(xparam1)),M_,options_mom_,estim_params_,bayestopt_laplace,oo_.mom,prior_dist_names,sprintf('%s (STAGE %d ITERATION %d) VERBOSE',options_mom_.mom.mom_method,stage_iter,optim_iter),sprintf('verbose_%s_stage_%d_iter_%d',lower(options_mom_.mom.mom_method),stage_iter,optim_iter));
|
|
end
|
|
xparam0=xparam1;
|
|
end
|
|
options_mom_.vector_output = false;
|
|
% Update M_ and DynareResults (in particular to get oo_.mom.model_moments)
|
|
M_ = set_all_parameters(xparam1,estim_params_,M_);
|
|
[fval, ~, ~,~,~, oo_] = feval(objective_function, xparam1, Bounds, oo_, estim_params_, M_, options_mom_);
|
|
% Compute Standard errors
|
|
SE = method_of_moments_standard_errors(xparam1, objective_function, Bounds, oo_, estim_params_, M_, options_mom_, Woptflag);
|
|
|
|
% Store results in output structure
|
|
oo_.mom = display_estimation_results_table(xparam1,SE,M_,options_mom_,estim_params_,bayestopt_laplace,oo_.mom,prior_dist_names,sprintf('%s (STAGE %u)',options_mom_.mom.mom_method,stage_iter),sprintf('%s_stage_%u',lower(options_mom_.mom.mom_method),stage_iter));
|
|
end
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 8: J test
|
|
% -------------------------------------------------------------------------
|
|
if options_mom_.mom.mom_nbr > length(xparam1)
|
|
%get optimal weighting matrix for J test, if necessary
|
|
if ~Woptflag
|
|
W_opt = method_of_moments_optimal_weighting_matrix(oo_.mom.m_data, oo_.mom.model_moments, options_mom_.mom.bartlett_kernel_lag);
|
|
oo_j=oo_;
|
|
oo_j.mom.Sw = chol(W_opt);
|
|
[fval] = feval(objective_function, xparam1, Bounds, oo_j, estim_params_, M_, options_mom_);
|
|
end
|
|
|
|
% Compute J statistic
|
|
if strcmp(options_mom_.mom.mom_method,'SMM')
|
|
Variance_correction_factor = options_mom_.mom.variance_correction_factor;
|
|
elseif strcmp(options_mom_.mom.mom_method,'GMM')
|
|
Variance_correction_factor=1;
|
|
end
|
|
oo_.mom.J_test.j_stat = dataset_.nobs*Variance_correction_factor*fval/options_mom_.mom.weighting_matrix_scaling_factor;
|
|
oo_.mom.J_test.degrees_freedom = length(oo_.mom.model_moments)-length(xparam1);
|
|
oo_.mom.J_test.p_val = 1-chi2cdf(oo_.mom.J_test.j_stat, oo_.mom.J_test.degrees_freedom);
|
|
fprintf('\nvalue of J-test statistic: %f\n',oo_.mom.J_test.j_stat)
|
|
fprintf('p-value of J-test statistic: %f\n',oo_.mom.J_test.p_val)
|
|
end
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 9: Display estimation results
|
|
% -------------------------------------------------------------------------
|
|
title = ['Data moments and model moments (',options_mom_.mom.mom_method,')'];
|
|
headers = {'Moment','Data','Model','% dev. target'};
|
|
labels= M_.matched_moments(:,4);
|
|
data_mat=[oo_.mom.data_moments oo_.mom.model_moments 100*abs((oo_.mom.model_moments-oo_.mom.data_moments)./oo_.mom.data_moments)];
|
|
dyntable(options_mom_, title, headers, labels, data_mat, cellofchararraymaxlength(labels)+2, 10, 7);
|
|
if options_mom_.TeX
|
|
lh = cellofchararraymaxlength(labels)+2;
|
|
labels_TeX = M_.matched_moments(:,5);
|
|
dyn_latex_table(M_, options_mom_, title, 'sim_corr_matrix', headers, labels_TeX, data_mat, lh, 10, 7);
|
|
end
|
|
|
|
if options_mom_.mode_check.status
|
|
method_of_moments_check_plot(objective_function,xparam1,SE,options_mom_,M_,estim_params_,Bounds,bayestopt_laplace,...
|
|
Bounds, oo_, estim_params_, M_, options_mom_)
|
|
end
|
|
|
|
fprintf('\n==== Method of Moments Estimation (%s) Completed ====\n\n',options_mom_.mom.mom_method)
|
|
|
|
% -------------------------------------------------------------------------
|
|
% Step 9: Clean up
|
|
% -------------------------------------------------------------------------
|
|
%reset warning state
|
|
if isoctave
|
|
warning('on')
|
|
else
|
|
warning on
|
|
end
|