AN EXTENDED FUZZY ARTIFICIAL NEURAL NETWORKS MODEL FOR TIME SERIES FORECASTING

Abstract:
Improving time series forecasting accuracy is an important yet often dicult task. Both theoretical and empirical ndings have indicated that integration of several models is an e ective way to improve predictive performance, especially when the models in combination are quite di erent. In this paper, a model of the hybrid arti cial neural networks and fuzzy model is proposed for time series forecasting, using autoregressive integrated moving average models. In the proposed model, by rst modeling the linear components, autoregressive integrated moving average models are combined with the these hybrid models to yield a more general and accurate forecasting model than the traditional hybrid arti cial neural networks and fuzzy models. Empirical results for nancial time series forecasting indicate that the proposed model exhibits e ectively improved forecasting accuracy and hence is an appropriate forecasting tool for nancial time series forecasting.
Language:
English
Published:
Iranian journal of fuzzy systems, Volume:8 Issue: 3, Oct 2011
Page:
45
https://magiran.com/p923987