Pre-treatment routines/schemes
Running an automatic pre-treatment of the raw data based on standard options in the seasonal adjustment tools.
Calendar adjustment
To perform calendar adjustments on all series showing significant and plausible calendar effects within a statistically robust
approach, such as regression or RegARIMA (a regression model with an ARIMA structure for the residuals).
Methods for trading/working day adjustment
RegARIMA correction – in this case, the effect of trading days is estimated in a RegArima framework. The effect of trading
days can be estimated by using a correction for the length of the month or leap year, regressing the series on the number
of working days, etc. In this case, the residuals will have an ARIMA structure.
Correction for moving holidays
Automatic correction. If performed by X-12-ARIMA, automatic correction of raw data will be based on US holidays.
National and EU/euro area calendars
Use of default calendars. The default in X-12-ARIMA is the US calendar.
Treatment of outliers
Outliers are detected automatically by the seasonal adjustment tool. The outliers are removed before seasonal adjustment is
carried out, and then reintroduced into the seasonally adjusted data.
Model selection
Pre-treatment requires choosing an ARIMA model, as well as deciding whether the data should be log-transformed or not.
Model selection is primarily automatic, but in some cases models are selected manually.
Decomposition scheme
The decomposition scheme specifies how the various components – basically trend-cycle, seasonal and irregular – combine to
form the original series. The most frequently used decomposition schemes are the multiplicative, additive or log additive.
Manual decomposition scheme selection after graphical inspection of the series.