I am trying to apply auto.arima to a data that has been transformed from a dataframe object to a data.table object. My data.table has both a dependent variable and covariates, so I use xreg in my code. I chose to use data.tables because I read that my code would run faster using data.table. My time series are also xts objects. If possible, I would like to pass the dependent variable and covariates to auto.arima by index position in the data.table. I thought I understood the proper way to do this is as follows: My dependent variable, "demand" is in column 3 of DATATABLE and the covariates are in column 4:22. Both column 3 and 4 are continuous variables which are xts objects, the other covariates are seasonal dummies. Region is column 2 and it is used to split the data into 24 subdivisions.
I create a generic function to run auto.arima and extract the coefficients.
arima.coef <-function(df) auto.arima(df[,3,with=FALSE], xreg=df[,4:22,with=FALSE])$coef
I then use ddply on the model object list "arima.coef" to apply the auto.arima to each subset of data which is split by a region variable which has 24 levels.
The error I am getting is the following:
Error in '[.data.frame'(df, ,3,with=FALSE): unused argument (with=FALSE)
My question is: Can some one help me figure out the code and logic to use data.table like I would data.frame using plyr? Can I use it without explicitly naming variable names? Thank you