function [pacmodl, lhs, rhs, pnames, enames, xnames, rname, pid, eid, xid, pnames_, ipnames_, params, data, islaggedvariables] = init(M_, oo_, eqname, params, data, range) % Copyright © 2018-2021 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 . % Get the original equation to be estimated [LHS, RHS] = get_lhs_and_rhs(eqname, M_, true); % Check that the equation has a PAC expectation term. if ~contains(RHS, 'pac_expectation', 'IgnoreCase', true) error('This is not a PAC equation.') end % Get the name of the PAC model. pattern = '(\(model_name\s*=\s*)(?\w+)\)'; pacmodl = regexp(RHS, pattern, 'names'); pacmodl = pacmodl.name; pacmodel = M_.pac.(pacmodl); % Get the transformed equation to be estimated. [lhs, rhs, json] = get_lhs_and_rhs(eqname, M_); % Get definition of aux. variable for pac expectation... if isfield(pacmodel, 'aux_id') auxrhs = {M_.lhs{pacmodel.aux_id}, json.model{pacmodel.aux_id}.rhs}; elseif isfield(pacmodel, 'components') auxrhs = cell(length(pacmodel.components), 2); for i=1:length(pacmodel.components) auxrhs{i,1} = M_.lhs{pacmodel.components(i).aux_id}; auxrhs{i,2} = sprintf('(%s)', json.model{pacmodel.components(i).aux_id}.rhs); end else error('Cannot find auxiliary variables for PAC expectation.') end % ... and substitute in rhs. for i=1:rows(auxrhs) rhs = strrep(rhs, auxrhs{i,1}, auxrhs{i,2}); end % Get pacmodel properties pacmodel = M_.pac.(pacmodl); % Get the parameters and variables in the PAC equation. [pnames, enames, xnames, pid, eid, xid] = get_variables_and_parameters_in_equation(lhs, rhs, M_); % Get list and indices of estimated parameters. ipnames_ = get_estimated_parameters_indices(params, pnames, eqname, M_); % If equation is estimated by recursive OLS, ensure that the error % correction parameter comes first, followed by the autoregressive % parameters (in increasing order w.r.t. the lags). stack = dbstack; ipnames__ = ipnames_; % The user provided order. if isequal(stack(2).name, 'iterative_ols') ipnames_ = [pacmodel.ec.params; pacmodel.ar.params']; if isfield(pacmodel, 'optim_additive') ipnames_ = [ipnames_; pacmodel.optim_additive.params(~isnan(pacmodel.optim_additive.params))']; end if isfield(pacmodel, 'additive') ipnames_ = [ipnames_; pacmodel.additive.params(~isnan(pacmodel.additive.params))']; end if isfield(pacmodel, 'share_of_optimizing_agents_index') ipnames_ = [ipnames_; pacmodel.share_of_optimizing_agents_index]; end for i=1:length(ipnames_) if ~ismember(ipnames_(i), ipnames__) % This parameter is not estimated. ipnames_(i) = NaN; end end end % Remove calibrated parameters (if any). ipnames_(isnan(ipnames_)) = []; % Reorder params if needed. [~, permutation] = ismember(ipnames__, ipnames_); pnames_ = fieldnames(params); pnames_ = pnames_(permutation); params = orderfields(params, permutation); % Add the auxiliary variables in the dataset. if M_.endo_nbr>M_.orig_endo_nbr data = feval([M_.fname '.dynamic_set_auxiliary_series'], data, M_.params); end % Check that the data for endogenous variables have values. if any(isnan(data{enames{:}}(range).data(:))) error('Some variable values are missing in the database.') end % Set the number of exogenous variables. xnbr = length(xnames); % Test if we have a residual and get its name (-> rname). if isequal(xnbr, 1) rname = M_.exo_names{strcmp(xnames{1}, M_.exo_names)}; if ~all(isnan(data{xnames{1}}.data)) error('The residual (%s) must have NaN values in the provided database.', xnames{1}) end else % We have observed exogenous variables in the PAC equation. tmp = data{xnames{:}}(range).data; idx = find(all(~isnan(tmp))); % Indices for the observed exogenous variables. if isequal(length(idx), length(xnames)) error('There is no residual in this equation, all the exogenous variables are observed.') else if length(idx)