Le. Oller et C. Tallbom, SMOOTH AND TIMELY BUSINESS-CYCLE INDICATORS FOR NOISY SWEDISH DATA, International journal of forecasting, 12(3), 1996, pp. 389-402
Noise in statistical time series is often overlooked when selecting th
e best forecasting model by minimizing forecast errors. An ''error'' i
mplies that one knows the true (noise-free) outcome. Instead of merely
trying to forecast a noisy outcome, we construct entirely new indicat
ors, based on business tendency survey data and statistical time serie
s. False turning point signals are avoided by exponential smoothing. A
special trigger is found in the joint behavior of model generated smo
othed and unsmoothed forecasts, by which smoothing can be switched off
in sharp turns, and this avoids late turning point signals that would
occur with smoothed data.