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I am quite new to R programming but I cant find anything about my Problem...

I would like to do some forecasting in R with the forecasting package from high resolution data (halfhourly data). I would like to have the forecast working online. That is why I think calculating a fit every single time is not very useful.

Therefore I like the method to pass the already fitted model to the Model and use it for new data:

fcast2 <- forecast ( Arima ( x = extendedSeries , model = oldArimaModel ), h = horizon )

But it does not really work with an HoltWinters model... (or a lm -model which is ok regarding what lm means)

fcastArima <- forecast(Arima(x= extendedseries , model=oldArimaFit),h=horizon)
fcastHoltWinters <- forecast(update(oldHWfit, x=extendedSereies), h=horizon)  

anyway, I would like to keep the code simple and I am looking for a more generic method to apply already fitted ts models to the updated data set.

Does anyone know how to do this?


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I just discoverd the dshw function in the R forecast package... any ideas how to deal with that aiming the same target as above? – Basti Sep 27 '12 at 8:39

1 Answer 1

up vote 2 down vote accepted

HoltWinters() is a very limited function. The ets() function will fit the same models, with better estimation, and will fit a much larger range of similar models. It also allows re-fitting to new data in the same way you are doing with Arima().

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Thank you Dr. Hyndman for your quick answer. Is there a way to avoid the auto-surpression of frequencies higher than 24 in ets function (i got 48 values per day)? Cheers Basti – Basti Oct 2 '12 at 11:15
If you have high frequency data, use tbats() instead of ets(). – Rob Hyndman Oct 2 '12 at 12:34

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