function [loss,info,exit_flag,df,vx]=objective(x,M_, oo_, options_,i_params,i_var,weights) % [loss,info,exit_flag,df,vx]=objective(x,M_, oo_, options_,i_params,i_var,weights) % Objective function for optimal simple rules (OSR) % INPUTS % x vector values of the parameters % over which to optimize % M_ [structure] Dynare's model structure % oo_ [structure] Dynare's results structure % options_ [structure] Dynare's options structure % i_params vector index of optimizing parameters in M_.params % i_var vector variables indices % weights vector weights in the OSRs % % OUTPUTS % loss scalar loss function returned to solver % info vector info vector returned by resol % exit_flag scalar exit flag returned to solver % df vectcor Analytic Jacobian % vx vector variances of the endogenous variables % % SPECIAL REQUIREMENTS % none % Copyright © 2005-2023 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 . exit_flag = 1; vx = []; df=NaN(length(i_params),1); % set parameters of the policy rule M_.params(i_params) = x; [oo_.dr,info,M_.params] = resol(0,M_,options_,oo_.dr ,oo_.steady_state, oo_.exo_steady_state, oo_.exo_det_steady_state); if info(1) if info(1) == 3 || info(1) == 4 || info(1) == 5 || info(1)==6 ||info(1) == 19 ||... info(1) == 20 || info(1) == 21 || info(1) == 23 || info(1) == 26 || ... info(1) == 81 || info(1) == 84 || info(1) == 85 loss = 1e8; info(4)=info(2); return else loss = 1e8; info(4)=0.1; return end end if ~options_.analytic_derivation vx = osr.get_variance_of_endogenous_variables(M_,options_,oo_.dr,i_var); loss = full(weights(:)'*vx(:)); else totparam_nbr=length(i_params); oo_.dr.derivs = get_perturbation_params_derivs(M_, options_, [], oo_.dr, oo_.steady_state, oo_.exo_steady_state, oo_.exo_det_steady_state, i_params, [], [], 0); %analytic derivatives of perturbation matrices pruned_state_space = pruned_state_space_system(M_, options_, oo_.dr, i_var, 0, 0, 1); vx = pruned_state_space.Var_y + pruned_state_space.E_y*pruned_state_space.E_y'; dE_yy = pruned_state_space.dVar_y; for jp=1:length(i_params) dE_yy(:,:,jp) = dE_yy(:,:,jp) + pruned_state_space.dE_y(:,jp)*pruned_state_space.E_y' + pruned_state_space.E_y*pruned_state_space.dE_y(:,jp)'; end model_moments_params_derivs = reshape(dE_yy,length(i_var)^2,totparam_nbr); df = NaN(totparam_nbr,1); loss = full(weights(:)'*vx(:)); for jp=1:length(i_params) df(jp,1) = sum(weights(:).*model_moments_params_derivs(:,jp)); end end