Hi, I'm trying to create an auto regressive model, and I want to use AIC to identify the optimal number of lags to include in it. Does anyone know of any code that I can use to do this? I think this requires the econometrics toolbox which I do have. Thanks

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Oleg Komarov
Oleg Komarov el 31 de Jul. de 2011

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Example: AR(1)
% Generate series
Series = rand(100,1);
% Set the AR(1) - note the constant variance
Spec = garchset('R',1,'VarianceModel','Constant');
% Estimate
[Coeff,Errors,LLF] = garchfit(Spec,Series);
% Display
garchdisp(Coeff,Errors)
aicbic(LLF,garchcount(Coeff))
Alternatively:

4 comentarios

Michael
Michael el 31 de Jul. de 2011
Hey, thanks for the answer, but would you be able to explain what the lines do? I'm not familiar with the code at all. Thanks!
Oleg Komarov
Oleg Komarov el 31 de Jul. de 2011
garchset/fit are the functions used to estimate garch/armax models. There's no separate functions for ARMA modelling so you have to set the variance equation in the grach model to constant to estimate ARMAs.
To have an autoregressive of order one - AR(1) - I just specify R (read fucntions doc for more details).
Michael
Michael el 31 de Jul. de 2011
Ok great, thanks, I managed to get sorted!
Luis Hernandez
Luis Hernandez el 16 de Ag. de 2017
Hi Oleg!! Thank so much for the script!! I've fit an AR(1) model with that script. But, i want to know the meaning of 'K' parameter in coeff set. Is it the value of white noise variance? According to the documentation of garchset the 'K' parameter is just for GARCH models or conditional variance models, why that parameter appears in AR(1) model? Im working with several ARMAX models and need to know the value of that variance. How could find this value? Thanks in advance!!!

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