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Revista EIA
Print version ISSN 1794-1237On-line version ISSN 2463-0950
Abstract
CASTRO, Carlos Alberto and URIBE, Diana Cecilia. PARAMETER AND INITIAL VALUES OPTIMIZATION FOR HOLT MODEL BASED ON TRACKING SIGNALS. Rev.EIA.Esc.Ing.Antioq [online]. 2010, n.14, pp.115-124. ISSN 1794-1237.
Time series models are quantitative techniques commonly used to forecast the behavior of variables. These models include the exponential smoothing with trend or Holt model that requires the definition of the smoothing constants α and β and the initialization values, both required for the model upgrade. This paper proposes a different way to obtain the parameter values and initial conditions of the Holts model, optimizing the tracking signal range (TSR), in order to achieve a more robust model from the viewpoint of accuracy of the results and historical performance. Some comparisons between the proposed approach and the traditional methods based on the mean absolute deviation (MAD) and the mean square error (MSE) are provided. These are the measures traditionally used to determine the degree of accuracy of a model, and a better model performance is obtained.
Keywords : forecasting; time series; Holts exponential smoothing; performance measures.