A new genetic fuzzy system approach for parameter estimation of ARIMA model.

Autor: Hassan, Saima, Jaafar, Jafreezal, Belhaouari, Brahim S., Khosravi, Abbas
Předmět:
Zdroj: AIP Conference Proceedings; Sep2012, Vol. 1482 Issue 1, p455-459, 5p, 2 Diagrams
Abstrakt: The Autoregressive Integrated moving Average model is the most powerful and practical time series model for forecasting. Parameter estimation is the most crucial part in ARIMA modeling. Inaccurate and wrong estimated parameters lead to bias and unacceptable forecasting results. Parameter optimization can be adopted in order to increase the demand forecasting accuracy. A paradigm of the fuzzy system and a genetic algorithm is proposed in this paper as a parameter estimation approach for ARIMA. The new approach will optimize the parameters by tuning the fuzzy membership functions with a genetic algorithm. The proposed Hybrid model of ARIMA and the genetic fuzzy system will yield acceptable forecasting results. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index