Added the possibility of computing hp-filtered simulated moments.
parent
fb97797405
commit
dcf49d606f
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@ -23,10 +23,6 @@ global M_ options_ oo_
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warning_old_state = warning;
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warning_old_state = warning;
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warning off
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warning off
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if options_.hp_filter
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error('STOCH_SIMUL: HP filter is not yet implemented for empirical moments')
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end
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if size(var_list,1) == 0
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if size(var_list,1) == 0
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var_list = M_.endo_names(1:M_.orig_endo_nbr, :);
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var_list = M_.endo_names(1:M_.orig_endo_nbr, :);
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end
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end
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@ -45,7 +41,13 @@ end
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y = y(ivar,options_.drop+M_.maximum_lag+1:end)';
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y = y(ivar,options_.drop+M_.maximum_lag+1:end)';
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m = mean(y);
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m = mean(y);
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y = y - repmat(m,size(y,1),1);
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if options_.hp_filter
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[hptrend,y] = sample_hp_filter(y,options_.hp_filter);
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else
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y = bsxfun(@minus, y, m);
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end
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s2 = mean(y.*y);
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s2 = mean(y.*y);
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s = sqrt(s2);
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s = sqrt(s2);
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oo_.mean = transpose(m);
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oo_.mean = transpose(m);
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@ -54,8 +56,7 @@ oo_.var = y'*y/size(y,1);
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labels = deblank(M_.endo_names(ivar,:));
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labels = deblank(M_.endo_names(ivar,:));
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if options_.nomoments == 0
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if options_.nomoments == 0
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z = [ m' s' s2' (mean(y.^3)./s2.^1.5)' (mean(y.^4)./(s2.*s2)-3)' ];
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z = [ m' s' s2' (mean(y.^3)./s2.^1.5)' (mean(y.^4)./(s2.*s2)-3)' ];
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title='MOMENTS OF SIMULATED VARIABLES';
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title='MOMENTS OF SIMULATED VARIABLES';
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if options_.hp_filter
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if options_.hp_filter
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title = [title ' (HP filter, lambda = ' ...
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title = [title ' (HP filter, lambda = ' ...
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@ -0,0 +1,44 @@
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function [hptrend,hpcycle] = sample_hp_filter(y,s)
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% HP filters a collection of time series.
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%
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% INPUTS
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% y [double] T*n matrix of data (n is the number of variables)
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% s [integer] scalar, smoothing parameter.
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%
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% OUTPUTS
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% hptrend [double] T*n matrix, trend component of y.
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% hpcycle [double] T*n matrix, cycle component of y.
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%
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% SPECIAL REQUIREMENTS
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%
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% Copyright (C) 2010 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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[T,n] = size(y);
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if nargin<2
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s = 1600;
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end
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D = spdiags(repmat([s, -4.0*s, (1 + 6.0*s), -4.0*s, s], T, 1), -2:2, T, T);% Sparse matrix.
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D(1,1) = 1.0+s; D(T,T) = D(1,1);
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D(1,2) = -2.0*s; D(2,1) = D(1,2); D(T-1,T) = D(1,2); D(T,T-1) = D(1,2);
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D(2,2) = 1.0+5.0*s; D(T-1,T-1) = D(2,2);
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hptrend = D\y;
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hpcycle = y-hptrend;
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