How can I estimate a Vector Autoregressive (VAR) Model by OLS?
5 Ansichten (letzte 30 Tage)
Ältere Kommentare anzeigen
How can I estimate a VAR Model with the vgxvarx function by Ordinary Least Squares ( OLS )?
By default vgxvarx uses the Maximum Likelihood and I can't find how to change it.
I tried with the default MLE:
Spec = vgxset('n',5,'nAR',1,'Constant',false);
EstSpec = vgxvarx(Spec, Y, [], Y0);
but I get this error:
Error using mvregress (line 425)
Covariance is not positive-definite.
Error in vgxvarx (line 521)
[x,Q,~,xvar] = mvregress(D,R, 'covtype',covartype, 'varformat',varformat, ...
Here:
it mentions to set 'MaxIter' to 1 for OLS, but it's not clear how to use the OLS approach.
2 Kommentare
Shashank Prasanna
am 17 Okt. 2013
Would you be willing to share why you don't want to use the MLE approach in the Econometrics toolbox?
Antworten (1)
Hang Qian
am 30 Mär. 2014
Bearbeitet: Hang Qian
am 30 Mär. 2014
Yes, estimation of a VAR(p) model by OLS is possible using the vgxvarx functionality. The vgxvarx uses maximum likelihood for rigorous treatment of missing values and presample values.
If the data are complete and presample values are specified (using the first p values of the data), vgxvarx will produce an estimator identical to the OLS estimator. For example, consider a VAR(2) model with 3 variables,
Y = rand(100,3);
Spec = vgxset('n',3,'nAR',2);
EstSpec = vgxvarx(Spec,Y(3:100,:),[],Y(1:2,:));
OLS1 = [EstSpec.AR{1},EstSpec.AR{2}]'
OLS2 = [Y(2:end-1,:),Y(1:end-2,:)] \ Y(3:end,:)
The second estimator is the raw OLS estimator.
norm(OLS1-OLS2) suggests that vgxvarx reproduces the raw OLS estimator.
Hang Qian
1 Kommentar
Siehe auch
Kategorien
Mehr zu Multivariate Models finden Sie in Help Center und File Exchange
Produkte
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!