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!