Article ID: | iaor2001536 |
Country: | United Kingdom |
Volume: | 17 |
Issue: | 7 |
Start Page Number: | 515 |
End Page Number: | 526 |
Publication Date: | Dec 1998 |
Journal: | International Journal of Forecasting |
Authors: | Planas Christophe |
Keywords: | ARIMA processes |
Seasonal adjustment is performed in some data-producing agencies according to the ARIMA-model-based signal extraction theory. A stochastic linear process parametrized in terms of an ARIMA model is first fitted to the series, and from this model the models for the trend, cycle, seasonal, and irregular component can be derived. A spectrum is associated to every component model and is used to compute the optimal Wiener–Kolmogorov filter. Since the modelling is linear, prior linearization of the series with intervention techniques is performed. This paper discusses the performance of linear signal extraction with intervention techniques in non-linear processes. In particular, the following issues are discussed: (1) the ability of intervention techniques to linearize times series which present non-linearities; (2) the stability of the linear projection giving the components estimators under non-linear misspecifications; (3) the capacity of the WK filter to preserve the linearity in some components and the non-linearities in others.