dynare/matlab/ep/extended_path.m

272 lines
10 KiB
Matlab

function [ts,results] = extended_path(initial_conditions,sample_size, DynareOptions, DynareModel, DynareResults)
% Stochastic simulation of a non linear DSGE model using the Extended Path method (Fair and Taylor 1983). A time
% series of size T is obtained by solving T perfect foresight models.
%
% INPUTS
% o initial_conditions [double] m*nlags array, where m is the number of endogenous variables in the model and
% nlags is the maximum number of lags.
% o sample_size [integer] scalar, size of the sample to be simulated.
%
% OUTPUTS
% o time_series [double] m*sample_size array, the simulations.
%
% ALGORITHM
%
% SPECIAL REQUIREMENTS
% Copyright (C) 2009-2016 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 <http://www.gnu.org/licenses/>.
ep = DynareOptions.ep;
DynareOptions.verbosity = ep.verbosity;
verbosity = ep.verbosity+ep.debug;
% Set maximum number of iterations for the deterministic solver.
DynareOptions.simul.maxit = ep.maxit;
% Prepare a structure needed by the matlab implementation of the perfect foresight model solver
pfm = setup_stochastic_perfect_foresight_model_solver(DynareModel,DynareOptions,DynareResults);
if DynareModel.exo_det_nbr~=0
error('ep: Extended path does not support varexo_det.')
end
endo_nbr = DynareModel.endo_nbr;
exo_nbr = DynareModel.exo_nbr;
maximum_lag = DynareModel.maximum_lag;
maximum_lead = DynareModel.maximum_lead;
epreplic_nbr = ep.replic_nbr;
steady_state = DynareResults.steady_state;
dynatol = DynareOptions.dynatol;
% Set default initial conditions.
if isempty(initial_conditions)
if isempty(DynareModel.endo_histval)
initial_conditions = steady_state;
else
initial_conditions = DynareModel.endo_histval;
end
end
% Set the number of periods for the perfect foresight model
periods = ep.periods;
pfm.periods = periods;
pfm.i_upd = pfm.ny+(1:pfm.periods*pfm.ny);
pfm.block = DynareOptions.block;
% keep a copy of pfm.i_upd
i_upd = pfm.i_upd;
% Set the algorithm for the perfect foresight solver
DynareOptions.stack_solve_algo = ep.stack_solve_algo;
% Set check_stability flag
do_not_check_stability_flag = ~ep.check_stability;
% Compute the first order reduced form if needed.
%
% REMARK. It is assumed that the user did run the same mod file with stoch_simul(order=1) and save
% all the globals in a mat file called linear_reduced_form.mat;
dr = struct();
if ep.init
DynareOptions.order = 1;
DynareResults.dr=set_state_space(dr,DynareModel,DynareOptions);
[dr,Info,DynareModel,DynareOptions,DynareResults] = resol(0,DynareModel,DynareOptions,DynareResults);
end
% Do not use a minimal number of perdiods for the perfect foresight solver (with bytecode and blocks)
DynareOptions.minimal_solving_period = 100;%DynareOptions.ep.periods;
% Initialize the output array.
time_series = zeros(DynareModel.endo_nbr,sample_size);
% Set the covariance matrix of the structural innovations.
variances = diag(DynareModel.Sigma_e);
positive_var_indx = find(variances>0);
effective_number_of_shocks = length(positive_var_indx);
stdd = sqrt(variances(positive_var_indx));
covariance_matrix = DynareModel.Sigma_e(positive_var_indx,positive_var_indx);
covariance_matrix_upper_cholesky = chol(covariance_matrix);
% (re)Set exo_nbr
%exo_nbr = effective_number_of_shocks;
% Set seed.
if ep.set_dynare_seed_to_default
set_dynare_seed('default');
end
% Set bytecode flag
bytecode_flag = ep.use_bytecode;
% Set number of replications
replic_nbr = ep.replic_nbr;
% Simulate shocks.
switch ep.innovation_distribution
case 'gaussian'
shocks = transpose(transpose(covariance_matrix_upper_cholesky)* ...
randn(effective_number_of_shocks,sample_size* ...
replic_nbr));
shocks(:,positive_var_indx) = shocks;
case 'calibrated'
replic_nbr = 1;
shocks = zeros(sample_size,DynareModel.exo_nbr);
for i = 1:length(DynareModel.unanticipated_det_shocks)
k = DynareModel.unanticipated_det_shocks(i).periods;
ivar = DynareModel.unanticipated_det_shocks(i).exo_id;
v = DynareModel.unanticipated_det_shocks(i).value;
if ~DynareModel.unanticipated_det_shocks(i).multiplicative
shocks(k,ivar) = v;
else
socks(k,ivar) = shocks(k,ivar) * v;
end
end
otherwise
error(['extended_path:: ' ep.innovation_distribution ' distribution for the structural innovations is not (yet) implemented!'])
end
% Set waitbar (graphic or text mode)
hh = dyn_waitbar(0,'Please wait. Extended Path simulations...');
set(hh,'Name','EP simulations.');
% hybrid correction
pfm.hybrid_order = ep.stochastic.hybrid_order;
if pfm.hybrid_order
DynareResults.dr = set_state_space(DynareResults.dr,DynareModel,DynareOptions);
options = DynareOptions;
options.order = pfm.hybrid_order;
pfm.dr = resol(0,DynareModel,options,DynareResults);
else
pfm.dr = [];
end
% number of nonzero derivatives
pfm.nnzA = DynareModel.NNZDerivatives(1);
% setting up integration nodes if order > 0
if ep.stochastic.order > 0
[nodes,weights,nnodes] = setup_integration_nodes(DynareOptions.ep,pfm);
pfm.nodes = nodes;
pfm.weights = weights;
pfm.nnodes = nnodes;
% compute number of blocks
[block_nbr,pfm.world_nbr] = get_block_world_nbr(ep.stochastic.algo,nnodes,ep.stochastic.order,ep.periods);
else
block_nbr = ep.periods;
end
% set boundaries if mcp
[lb,ub,pfm.eq_index] = get_complementarity_conditions(DynareModel, DynareOptions.ramsey_policy);
DynareOptions.lmmcp.lb = repmat(lb,block_nbr,1);
DynareOptions.lmmcp.ub = repmat(ub,block_nbr,1);
pfm.block_nbr = block_nbr;
% storage for failed draws
DynareResults.ep.failures.periods = [];
DynareResults.ep.failures.previous_period = cell(0);
DynareResults.ep.failures.shocks = cell(0);
DynareResults.exo_simul = shocks;
% Initializes some variables.
t = 1;
tsimul = 1;
for k = 1:replic_nbr
results{k} = zeros(endo_nbr,sample_size+1);
results{k}(:,1) = initial_conditions;
end
%make_ex_;
exo_simul_ = zeros(maximum_lag+sample_size+maximum_lead,exo_nbr);
exo_simul_(1:size(DynareResults.exo_simul,1),1:size(DynareResults.exo_simul,2)) = DynareResults.exo_simul;
% Main loop.
while (t <= sample_size)
if ~mod(t,10)
dyn_waitbar(t/sample_size,hh,'Please wait. Extended Path simulations...');
end
% Set period index.
t = t+1;
if replic_nbr > 1 && ep.parallel_1
parfor k = 1:replic_nbr
exo_simul = repmat(DynareResults.exo_steady_state',periods+2,1);
% exo_simul(1:sample_size+3-t,:) = exo_simul_(t:end,:);
exo_simul(2,:) = exo_simul_(DynareModel.maximum_lag+t,:) + ...
shocks((t-2)*replic_nbr+k,:);
initial_conditions = results{k}(:,t-1);
[results{k}(:,t), info_convergence] = extended_path_core(ep.periods,endo_nbr,exo_nbr,positive_var_indx, ...
exo_simul,ep.init,initial_conditions,...
maximum_lag,maximum_lead,steady_state, ...
ep.verbosity,bytecode_flag,ep.stochastic.order,...
DynareModel.params,pfm,ep.stochastic.algo,ep.solve_algo,ep.stack_solve_algo,...
DynareOptions.lmmcp,DynareOptions,DynareResults);
end
else
for k = 1:replic_nbr
exo_simul = repmat(DynareResults.exo_steady_state',periods+maximum_lag+ ...
maximum_lead,1);
% exo_simul(1:sample_size+maximum_lag+maximum_lead-t+1,:) = ...
% exo_simul_(t:end,:);
exo_simul(maximum_lag+1,:) = ...
exo_simul_(maximum_lag+t,:) + shocks((t-2)*replic_nbr+k,:);
initial_conditions = results{k}(:,t-1);
[results{k}(:,t), info_convergence] = extended_path_core(ep.periods,endo_nbr,exo_nbr,positive_var_indx, ...
exo_simul,ep.init,initial_conditions,...
maximum_lag,maximum_lead,steady_state, ...
ep.verbosity,bytecode_flag,ep.stochastic.order,...
DynareModel,pfm,ep.stochastic.algo,ep.solve_algo,ep.stack_solve_algo,...
DynareOptions.lmmcp,DynareOptions,DynareResults);
end
end
if verbosity
if info_convergence
disp(['Time: ' int2str(t) '. Convergence of the perfect foresight model solver!'])
else
disp(['Time: ' int2str(t) '. No convergence of the perfect foresight model solver!'])
end
end
end% (while) loop over t
dyn_waitbar_close(hh);
if isnan(DynareOptions.initial_period)
initial_period = dates(1,1);
else
initial_period = DynareOptions.initial_period;
end
if nargout
if ~isnan(results{1})
ts = dseries(transpose([results{1}]), ...
initial_period,cellstr(DynareModel.endo_names));
else
ts = NaN;
end
else
if ~isnan(results{1})
DynareResults.endo_simul = results{1};
ts = dseries(transpose(results{1}),initial_period, ...
cellstr(DynareModel.endo_names));
else
DynareResults.endo_simul = NaN;
ts = NaN;
end
end
assignin('base', 'Simulated_time_series', ts);