dynare/matlab/set_state_space.m

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% Copyright (C) 2001 Michel Juillard
%
function dr=set_state_space(dr)
global M_ oo_ options_ it_
xlen = M_.maximum_lead + M_.maximum_lag + 1;
klen = M_.maximum_lag + M_.maximum_lead + 1;
if ~ M_.lead_lag_incidence(M_.maximum_lag+1,:) > 0
error ('Error in model specification: some variables don"t appear as current') ;
end
fwrd_var = find(any(M_.lead_lag_incidence(M_.maximum_lag+2:end,:),1))';
if M_.maximum_lag > 0
pred_var = find(any(M_.lead_lag_incidence(1:M_.maximum_lag,:),1))';
both_var = intersect(pred_var,fwrd_var);
pred_var = setdiff(pred_var,both_var);
fwrd_var = setdiff(fwrd_var,both_var);
stat_var = setdiff([1:M_.endo_nbr]',union(union(pred_var,both_var),fwrd_var)); % static variables
else
pred_var = [];
both_var = [];
stat_var = setdiff([1:M_.endo_nbr]',fwrd_var);
end
nboth = length(both_var);
npred = length(pred_var);
nfwrd = length(fwrd_var);
nstatic = length(stat_var);
order_var = [ stat_var; pred_var; both_var; fwrd_var];
inv_order_var(order_var) = (1:M_.endo_nbr)';
% building kmask for z state vector in t+1
if M_.maximum_lag > 0
kmask = [];
if M_.maximum_lead > 0
kmask = [cumsum(flipud(M_.lead_lag_incidence(M_.maximum_lag+2:end,order_var)),1)] ;
end
kmask = [kmask; flipud(cumsum(M_.lead_lag_incidence(1:M_.maximum_lag,order_var),1))] ;
else
kmask = cumsum(flipud(M_.lead_lag_incidence(M_.maximum_lag+2:klen,order_var)),1) ;
end
kmask = kmask';
kmask = kmask(:);
i_kmask = find(kmask); % index of nonzero entries in kmask
nd = size(i_kmask,1); % size of the state vector
kmask(i_kmask) = [1:nd];
% auxiliary equations
% elements that are both in z(t+1) and z(t)
k1 = find([kmask(1:end-M_.endo_nbr) & kmask(M_.endo_nbr+1:end)] );
kad = [];
kae = [];
if ~isempty(k1)
kad = kmask(k1+M_.endo_nbr);
kae = kmask(k1);
end
% composition of state vector
% col 1: variable; col 2: lead/lag in z(t+1);
% col 3: A cols for t+1 (D); col 4: A cols for t (E)
kstate = [ repmat([1:M_.endo_nbr]',klen-1,1) kron([klen:-1:2]',ones(M_.endo_nbr,1)) ...
zeros((klen-1)*M_.endo_nbr,2)];
kiy = flipud(M_.lead_lag_incidence(:,order_var))';
kiy = kiy(:);
kstate(1:M_.maximum_lead*M_.endo_nbr,3) = kiy(1:M_.maximum_lead*M_.endo_nbr)-M_.endo_nbr;
kstate(find(kstate(:,3) < 0),3) = 0;
kstate(M_.maximum_lead*M_.endo_nbr+1:end,4) = kiy((M_.maximum_lead+1)*M_.endo_nbr+1:end);
% put in E only the current variables that are not already in D
kstate = kstate(i_kmask,:);
dr.order_var = order_var;
dr.inv_order_var = inv_order_var;
dr.nstatic = nstatic;
dr.npred = npred+nboth;
dr.kstate = kstate;
dr.kad = kad;
dr.kae = kae;
dr.nboth = nboth;
dr.nfwrd = nfwrd;
% number of forward variables in the state vector
dr.nsfwrd = sum(kstate(:,2) > M_.maximum_lag+1);
% number of predetermined variables in the state vector
dr.nspred = sum(kstate(:,2) <= M_.maximum_lag+1);