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As a beginner, I am trying to understand the auto.arima function in the R forecasting package.

Particularly, I am interested in the selection based on the information criteria. For instance, I set ic=c("aicc","aic", "bic"). I then obtain the best fitting model with AIC, AICc, and BIC.

I also obtain a certain output value for every tested model, e.g. -18661.23 for (1,1,1); -18451.12 for (1,1,2) etc. If e.g. (1,1,1) is the selected model with lowest output value, this value is not equal to the given AIC, AICc, or BIC.

In simple words, how do I interpret the output value of every model? Is it a parallely weighted AIC, AICc, and BIC?

P.S.: I really tried to understand the documentation but it is hard for me to read.

Thank you very much in advance!

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What do you mean by the "output value"? –  Rob Hyndman Apr 14 '14 at 23:41
    
Thanks for your reply. My output values: ... ARIMA(2,0,2) with zero mean : -17391.46; ARIMA(2,0,2) with non-zero mean : -17413.33; ARIMA(2,0,3) with zero mean : -17389.61; ARIMA(2,0,3) with non-zero mean : -17411.40; ... ARIMA(2,0,2) with non-zero mean Coefficients: AIC=-17413.33 AICc=-17413.29 BIC=-17356.3 How do I interpret the output value for each model in the stepwise selection? E.g. (2,0,2) output value of -17413.33 is identical to the AIC. Is it always the AIC, even tough I specified ic=c("aic","aicc", "bic")? How are the AICc and the BIC taken into account? –  user3532201 Apr 16 '14 at 11:24

1 Answer 1

As far as I can tell, by "output value" you mean the value printed when you use auto.arima with trace=TRUE.

These values are the AIC (or AICc or BIC) for each model tried. An approximation is used during the search to speed things up, so the value printed may different slightly from the value returned, which is calculated without the approximation.

The argument ic determines which information criterion will be used. For example, setting ic="bic" means that the BIC is used in selecting the model. By default, ic="aicc".

In a function definition, an argument with default value equal to a vector of values is often a shorthand for showing what the possible values that argument can take, with the first value in the vector equal to the default. In this case, the function definition contains ic = c("aicc", "aic", "bic") meaning that ic can take only one of those three values, and the default is aicc if ic is not explicitly passed.

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