Sliding simulation: a new approach to time series forecasting

Makridakis, Spyros (1990-04)

Article

This paper proposes a new approach to time series forecasting based upon three premises. First, a model is selected not by how well it fits historical data but on its ability to accurately predict out-of-sample actual data. Second, a model/method is selected among several run in parallel using out-of-sample information. Third, models/methods are optimized for each forecasting horizon separately, making it possible to have different models/methods to predict each of the m horizons. This approach outperforms the best method of the M-Competition by a large margin when tested empirically with the 111 series subsample of the M-Competition data.

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© 1990, The Institute of Matiagement Sciences
Except where otherwise noted, this item's license is described as © 1990, The Institute of Matiagement Sciences