| Literature DB >> 24239986 |
Paulo Renato A Firmino1, Paulo S G de Mattos Neto2, Tiago A E Ferreira3.
Abstract
Combined forecasters have been in the vanguard of stochastic time series modeling. In this way it has been usual to suppose that each single model generates a residual or prediction error like a white noise. However, mostly because of disturbances not captured by each model, it is yet possible that such supposition is violated. The present paper introduces a two-step method for correcting and combining forecasting models. Firstly, the stochastic process underlying the bias of each predictive model is built according to a recursive ARIMA algorithm in order to achieve a white noise behavior. At each iteration of the algorithm the best ARIMA adjustment is determined according to a given information criterion (e.g. Akaike). Then, in the light of the corrected predictions, it is considered a maximum likelihood combined estimator. Applications involving single ARIMA and artificial neural networks models for Dow Jones Industrial Average Index, S&P500 Index, Google Stock Value, and Nasdaq Index series illustrate the usefulness of the proposed framework.Keywords: Artificial neural networks hybrid systems; Linear combination of forecasts; Maximum likelihood estimation; Time series forecasters; Unbiased forecasters
Mesh:
Year: 2013 PMID: 24239986 DOI: 10.1016/j.neunet.2013.10.008
Source DB: PubMed Journal: Neural Netw ISSN: 0893-6080