function xparam = get_posterior_parameters(type,M_,estim_params_,oo_,options_,field1) % function xparam = get_posterior_parameters(type,M_,estim_params_,oo_,options_,field1) % Selects (estimated) parameters (posterior mode or posterior mean). % % INPUTS % o type [char] = 'mode' or 'mean'. % o M_: [structure] Dynare structure describing the model. % o estim_params_: [structure] Dynare structure describing the estimated parameters. % o field_1 [char] optional field like 'mle_'. % % OUTPUTS % o xparam vector of estimated parameters % % SPECIAL REQUIREMENTS % None. % Copyright © 2006-2018 Dynare Team % % This file is part of Dynare. % % Dynare is free software: you can redistribute it and/or modify % it under the terms of the GNU General Public License as published by % the Free Software Foundation, either version 3 of the License, or % (at your option) any later version. % % Dynare is distributed in the hope that it will be useful, % but WITHOUT ANY WARRANTY; without even the implied warranty of % MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the % GNU General Public License for more details. % % You should have received a copy of the GNU General Public License % along with Dynare. If not, see . if nargin<6 field1='posterior_'; end nvx = estim_params_.nvx; nvn = estim_params_.nvn; ncx = estim_params_.ncx; ncn = estim_params_.ncn; np = estim_params_.np; xparam = zeros(nvx+nvn+ncx+ncn+np,1); m = 1; for i=1:nvx k1 = estim_params_.var_exo(i,1); name1 = M_.exo_names{k1}; xparam(m) = oo_.([field1 type]).shocks_std.(name1); m = m+1; end for i=1:nvn k1 = estim_params_.nvn_observable_correspondence(i,1); name1 = options_.varobs{k1}; xparam(m) = oo_.([field1 type]).measurement_errors_std.(name1); m = m+1; end for i=1:ncx k1 = estim_params_.corrx(i,1); k2 = estim_params_.corrx(i,2); name1 = M_.exo_names{k1}; name2 = M_.exo_names{k2}; xparam(m) = oo_.([field1 type]).shocks_corr.([name1 '_' name2]); m = m+1; end for i=1:ncn k1 = estim_params_.corrn_observable_correspondence(i,1); k2 = estim_params_.corrn_observable_correspondence(i,2); name1 = options_.varobs{k1}; name2 = options_.varobs{k2}; xparam(m) = oo_.([field1 type]).measurement_errors_corr.([name1 '_' name2]); m = m+1; end FirstDeep = m; for i=1:np name1 = M_.param_names{estim_params_.param_vals(i,1)}; xparam(m) = oo_.([field1 type]).parameters.(name1); m = m+1; end