377 lines
14 KiB
Matlab
377 lines
14 KiB
Matlab
function [dataset_,xparam1, M_, options_, oo_, estim_params_,bayestopt_, fake] = dynare_estimation_init(var_list_, dname, gsa_flag, M_, options_, oo_, estim_params_, bayestopt_)
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% function dynare_estimation_init(var_list_, gsa_flag)
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% preforms initialization tasks before estimation or
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% global sensitivity analysis
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%
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% INPUTS
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% var_list_: selected endogenous variables vector
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% dname: alternative directory name
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% gsa_flag: flag for GSA operation (optional)
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%
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% OUTPUTS
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% data: data after required transformation
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% rawdata: data as in the data file
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% xparam1: initial value of estimated parameters as returned by
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% set_prior()
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%
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% SPECIAL REQUIREMENTS
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% none
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% Copyright (C) 2003-2012 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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global objective_function_penalty_base
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if isempty(gsa_flag)
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gsa_flag = 0;
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else% Decide if a DSGE or DSGE-VAR has to be estimated.
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if ~isempty(strmatch('dsge_prior_weight',M_.param_names))
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options_.dsge_var = 1;
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end
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var_list_ = check_list_of_variables(options_, M_, var_list_);
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options_.varlist = var_list_;
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end
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% Get the indices of the observed variables in M_.endo_names.
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options_.lgyidx2varobs = zeros(size(M_.endo_names,1),1);
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for i = 1:size(M_.endo_names,1)
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tmp = strmatch(deblank(M_.endo_names(i,:)),options_.varobs,'exact');
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if ~isempty(tmp)
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if length(tmp)>1
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disp(' ')
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error(['Multiple declarations of ' deblank(M_.endo_names(i,:)) ' as an observed variable is not allowed!'])
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end
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options_.lgyidx2varobs(i) = tmp;
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end
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end
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if options_.order>2
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error(['I cannot estimate a model with a ' int2str(options_.order) ' order approximation of the model!'])
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end
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% Set options_.lik_init equal to 3 if diffuse filter is used or
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% kalman_algo refers to a diffuse filter algorithm.
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if (options_.diffuse_filter==1) || (options_.kalman_algo > 2)
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if options_.lik_init == 2
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error(['options diffuse_filter, lik_init and/or kalman_algo have ' ...
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'contradictory settings'])
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else
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options_.lik_init = 3;
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end
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end
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% If options_.lik_init == 1
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% set by default options_.qz_criterium to 1-1e-6
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% and check options_.qz_criterium < 1-eps if options_.lik_init == 1
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% Else set by default options_.qz_criterium to 1+1e-6
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if options_.lik_init == 1
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if isempty(options_.qz_criterium)
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options_.qz_criterium = 1-1e-6;
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elseif options_.qz_criterium > 1-eps
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error(['estimation: option qz_criterium is too large for estimating ' ...
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'a stationary model. If your model contains unit roots, use ' ...
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'option diffuse_filter'])
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end
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elseif isempty(options_.qz_criterium)
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options_.qz_criterium = 1+1e-6;
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end
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% If the data are prefiltered then there must not be constants in the
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% measurement equation of the DSGE model or in the DSGE-VAR model.
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if options_.prefilter == 1
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options_.noconstant = 1;
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end
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% Set options related to filtered variables.
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if ~isequal(options_.filtered_vars,0) && isempty(options_.filter_step_ahead)
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options_.filter_step_ahead = 1;
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end
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if ~isequal(options_.filtered_vars,0) && isequal(options_.filter_step_ahead,0)
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options_.filter_step_ahead = 1;
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end
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if ~isequal(options_.filter_step_ahead,0)
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options_.nk = max(options_.filter_step_ahead);
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end
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% Set the name of the directory where (intermediary) results will be saved.
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if isempty(dname)
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M_.dname = M_.fname;
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else
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M_.dname = dname;
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end
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% Set the number of observed variables.
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n_varobs = size(options_.varobs,1);
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% Set priors over the estimated parameters.
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if ~isempty(estim_params_)
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[xparam1,estim_params_,bayestopt_,lb,ub,M_] = set_prior(estim_params_,M_,options_);
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if any(bayestopt_.pshape > 0)
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% Plot prior densities.
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if ~options_.nograph && options_.plot_priors
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plot_priors(bayestopt_,M_,estim_params_,options_)
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end
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% Set prior bounds
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bounds = prior_bounds(bayestopt_,options_);
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bounds(:,1)=max(bounds(:,1),lb);
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bounds(:,2)=min(bounds(:,2),ub);
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else
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% No priors are declared so Dynare will estimate the model by
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% maximum likelihood with inequality constraints for the parameters.
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options_.mh_replic = 0;% No metropolis.
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bounds(:,1) = lb;
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bounds(:,2) = ub;
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end
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% Test if initial values of the estimated parameters are all between
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% the prior lower and upper bounds.
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if any(xparam1 < bounds(:,1)) || any(xparam1 > bounds(:,2))
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outside_bound_vars=bayestopt_.name([find(xparam1 < bounds(:,1)); find(xparam1 > bounds(:,2))],:);
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disp_string=[outside_bound_vars{1,:}];
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for ii=2:size(outside_bound_vars,1)
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disp_string=[disp_string,', ',outside_bound_vars{ii,:}];
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end
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error(['Initial value(s) of ', disp_string ,' are outside parameter bounds. Potentially, you should set prior_trunc=0.'])
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end
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lb = bounds(:,1);
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ub = bounds(:,2);
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bayestopt_.lb = lb;
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bayestopt_.ub = ub;
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else% If estim_params_ is empty (e.g. when running the smoother on a calibrated model)
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if ~options_.smoother
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error('ESTIMATION: the ''estimated_params'' block is mandatory (unless you are running a smoother)')
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end
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xparam1 = [];
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bayestopt_.lb = [];
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bayestopt_.ub = [];
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bayestopt_.jscale = [];
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bayestopt_.pshape = [];
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bayestopt_.p1 = [];
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bayestopt_.p2 = [];
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bayestopt_.p3 = [];
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bayestopt_.p4 = [];
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bayestopt_.p5 = [];
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bayestopt_.p6 = [];
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bayestopt_.p7 = [];
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estim_params_.nvx = 0;
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estim_params_.nvn = 0;
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estim_params_.ncx = 0;
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estim_params_.ncn = 0;
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estim_params_.np = 0;
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end
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% storing prior parameters in results
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oo_.prior.mean = bayestopt_.p1;
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oo_.prior.variance = diag(bayestopt_.p2.^2);
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% Is there a linear trend in the measurement equation?
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if ~isfield(options_,'trend_coeffs') % No!
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bayestopt_.with_trend = 0;
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else% Yes!
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bayestopt_.with_trend = 1;
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bayestopt_.trend_coeff = {};
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trend_coeffs = options_.trend_coeffs;
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nt = length(trend_coeffs);
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for i=1:n_varobs
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if i > length(trend_coeffs)
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bayestopt_.trend_coeff{i} = '0';
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else
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bayestopt_.trend_coeff{i} = trend_coeffs{i};
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end
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end
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end
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% Set the "size" of penalty.
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objective_function_penalty_base = 1e8;
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% Get informations about the variables of the model.
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dr = set_state_space(oo_.dr,M_,options_);
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oo_.dr = dr;
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nstatic = M_.nstatic; % Number of static variables.
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npred = M_.nspred; % Number of predetermined variables.
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nspred = M_.nspred; % Number of predetermined variables in the state equation.
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% Test if observed variables are declared.
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if isempty(options_.varobs)
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error('VAROBS is missing')
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end
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% Setting resticted state space (observed + predetermined variables)
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var_obs_index = [];
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k1 = [];
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for i=1:n_varobs
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var_obs_index = [var_obs_index; strmatch(deblank(options_.varobs(i,:)),M_.endo_names(dr.order_var,:),'exact')];
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k1 = [k1; strmatch(deblank(options_.varobs(i,:)),M_.endo_names, 'exact')];
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end
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% Define union of observed and state variables
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k2 = union(var_obs_index,[M_.nstatic+1:M_.nstatic+M_.nspred]', 'rows');
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% Set restrict_state to postion of observed + state variables in expanded state vector.
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oo_.dr.restrict_var_list = k2;
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bayestopt_.restrict_var_list = k2;
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% set mf0 to positions of state variables in restricted state vector for likelihood computation.
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[junk,bayestopt_.mf0] = ismember([M_.nstatic+1:M_.nstatic+M_.nspred]',k2);
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% Set mf1 to positions of observed variables in restricted state vector for likelihood computation.
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[junk,bayestopt_.mf1] = ismember(var_obs_index,k2);
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% Set mf2 to positions of observed variables in expanded state vector for filtering and smoothing.
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bayestopt_.mf2 = var_obs_index;
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bayestopt_.mfys = k1;
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[junk,ic] = intersect(k2,nstatic+(1:npred)');
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oo_.dr.restrict_columns = [ic; length(k2)+(1:nspred-npred)'];
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k3 = [];
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k3p = [];
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if options_.selected_variables_only
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for i=1:size(var_list_,1)
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k3 = [k3; strmatch(var_list_(i,:),M_.endo_names(dr.order_var,:), ...
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'exact')];
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k3p = [k3; strmatch(var_list_(i,:),M_.endo_names, ...
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'exact')];
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end
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else
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k3 = (1:M_.endo_nbr)';
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k3p = (1:M_.endo_nbr)';
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end
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% Define union of observed and state variables
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if options_.block == 1
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k1 = k1';
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[k2, i_posA, i_posB] = union(k1', M_.state_var', 'rows');
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% Set restrict_state to postion of observed + state variables in expanded state vector.
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oo_.dr.restrict_var_list = [k1(i_posA) M_.state_var(sort(i_posB))];
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% set mf0 to positions of state variables in restricted state vector for likelihood computation.
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[junk,bayestopt_.mf0] = ismember(M_.state_var',oo_.dr.restrict_var_list);
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% Set mf1 to positions of observed variables in restricted state vector for likelihood computation.
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[junk,bayestopt_.mf1] = ismember(k1,oo_.dr.restrict_var_list);
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% Set mf2 to positions of observed variables in expanded state vector for filtering and smoothing.
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bayestopt_.mf2 = var_obs_index;
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bayestopt_.mfys = k1;
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oo_.dr.restrict_columns = [size(i_posA,1)+(1:size(M_.state_var,2))];
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[k2, i_posA, i_posB] = union(k3p, M_.state_var', 'rows');
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bayestopt_.smoother_var_list = [k3p(i_posA); M_.state_var(sort(i_posB))'];
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[junk,junk,bayestopt_.smoother_saved_var_list] = intersect(k3p,bayestopt_.smoother_var_list(:));
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[junk,ic] = intersect(bayestopt_.smoother_var_list,M_.state_var);
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bayestopt_.smoother_restrict_columns = ic;
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[junk,bayestopt_.smoother_mf] = ismember(k1, ...
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bayestopt_.smoother_var_list);
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else
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k2 = union(var_obs_index,[M_.nstatic+1:M_.nstatic+M_.nspred]', 'rows');
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% Set restrict_state to postion of observed + state variables in expanded state vector.
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oo_.dr.restrict_var_list = k2;
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% set mf0 to positions of state variables in restricted state vector for likelihood computation.
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[junk,bayestopt_.mf0] = ismember([M_.nstatic+1:M_.nstatic+M_.nspred]',k2);
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% Set mf1 to positions of observed variables in restricted state vector for likelihood computation.
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[junk,bayestopt_.mf1] = ismember(var_obs_index,k2);
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% Set mf2 to positions of observed variables in expanded state vector for filtering and smoothing.
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bayestopt_.mf2 = var_obs_index;
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bayestopt_.mfys = k1;
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[junk,ic] = intersect(k2,nstatic+(1:npred)');
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oo_.dr.restrict_columns = [ic; length(k2)+(1:nspred-npred)'];
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bayestopt_.smoother_var_list = union(k2,k3);
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[junk,junk,bayestopt_.smoother_saved_var_list] = intersect(k3,bayestopt_.smoother_var_list(:));
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[junk,ic] = intersect(bayestopt_.smoother_var_list,nstatic+(1:npred)');
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bayestopt_.smoother_restrict_columns = ic;
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[junk,bayestopt_.smoother_mf] = ismember(var_obs_index, ...
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bayestopt_.smoother_var_list);
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end;
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if options_.analytic_derivation,
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options_.analytic_derivation = 1;
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if ~(exist('sylvester3','file')==2),
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dynareroot = strrep(which('dynare'),'dynare.m','');
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addpath([dynareroot 'gensylv'])
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end
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if estim_params_.np,
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% check if steady state changes param values
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M=M_;
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M.params(estim_params_.param_vals(:,1)) = M.params(estim_params_.param_vals(:,1))*1.01;
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if options_.diffuse_filter
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steadystate_check_flag = 0;
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else
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steadystate_check_flag = 1;
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end
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[tmp1, params] = evaluate_steady_state(oo_.steady_state,M,options_,oo_,steadystate_check_flag);
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change_flag=any(find(params-M.params));
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if change_flag,
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disp('The steadystate file changed the values for the following parameters: '),
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disp(M.param_names(find(params-M.params),:))
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disp('The derivatives of jacobian and steady-state will be computed numerically'),
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disp('(re-set options_.analytic_derivation_mode= -2)'),
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options_.analytic_derivation_mode= -2;
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end
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end
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end
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% Test if the data file is declared.
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if isempty(options_.datafile)
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if gsa_flag
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dataset_ = [];
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% rawdata = [];
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% data_info = [];
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return
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else
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error('datafile option is missing')
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end
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end
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% If jscale isn't specified for an estimated parameter, use global option options_.jscale, set to 0.2, by default.
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k = find(isnan(bayestopt_.jscale));
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bayestopt_.jscale(k) = options_.mh_jscale;
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% Load and transform data.
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transformation = [];
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if options_.loglinear && ~options_.logdata
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transformation = @log;
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end
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xls.sheet = options_.xls_sheet;
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xls.range = options_.xls_range;
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if ~isfield(options_,'nobs')
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options_.nobs = [];
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end
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dataset_ = initialize_dataset(options_.datafile,options_.varobs,options_.first_obs,options_.nobs,transformation,options_.prefilter,xls);
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options_.nobs = dataset_.info.ntobs;
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% setting noconstant option
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if options_.diffuse_filter
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steadystate_check_flag = 0;
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else
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steadystate_check_flag = 1;
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end
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M = M_;
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nvx = estim_params_.nvx;
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ncx = estim_params_.ncx;
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nvn = estim_params_.nvn;
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ncn = estim_params_.ncn;
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if estim_params_.np,
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M.params(estim_params_.param_vals(:,1)) = xparam1(nvx+ncx+nvn+ncn+1:end);
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end;
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[oo_.steady_state, params] = evaluate_steady_state(oo_.steady_state,M,options_,oo_,steadystate_check_flag);
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if all(abs(oo_.steady_state(bayestopt_.mfys))<1e-9)
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options_.noconstant = 1;
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else
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options_.noconstant = 0;
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end
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