I get very different results when trying to find the best AR(p) model using these methods.

ar {stats}: http://stat.ethz.ch/R-manual/R-patched/library/stats/html/ar.html

auto.arima {forecast}: http://rgm2.lab.nig.ac.jp/RGM2/func.php?rd_id=forecast:auto.arima

# x is some time series
auto.arima(x, d=0, max.q=0)

I cannot put data set here as it is very large but for the same data set, ar gives 44 whereas auto.arima gives 5. They both use AIC minimization. Does someone know why they yield so different results and which one is better?

  • I think this one belongs on crossvalidated.com. While it pertains R, the underlaying question is theoretical in nature and should be dealt by experts at CV. – Roman Luštrik Apr 5 '11 at 21:47

By default, ar() uses Yule-Walker estimation, not MLE.

By default, auto.arima() limits the model size to five parameters.

There are other differences, but those two alone will explain most of the differences between the fitted models.

As to which is better, that's for you to decide. It depends on the application and purpose of the model.

  • cool thats a good start thanks – user236215 Apr 6 '11 at 7:03

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