Title :
Time Series Modeling and Forecasting Using Memetic Algorithms for Regime-Switching Models
Author :
Bergmeir, Christoph ; Triguero, Isaac ; Molina, Daniel ; Aznarte, J.L. ; Benitez, Jose Manuel
Author_Institution :
Dept. of Comput. Sci. & Artificial Intell., Univ. of Granada, Granada, Spain
Abstract :
In this brief, we present a novel model fitting procedure for the neuro-coefficient smooth transition autoregressive model (NCSTAR), as presented by Medeiros and Veiga. The model is endowed with a statistically founded iterative building procedure and can be interpreted in terms of fuzzy rule-based systems. The interpretability of the generated models and a mathematically sound building procedure are two very important properties of forecasting models. The model fitting procedure employed by the original NCSTAR is a combination of initial parameter estimation by a grid search procedure with a traditional local search algorithm. We propose a different fitting procedure, using a memetic algorithm, in order to obtain more accurate models. An empirical evaluation of the method is performed, applying it to various real-world time series originating from three forecasting competitions. The results indicate that we can significantly enhance the accuracy of the models, making them competitive to models commonly used in the field.
Keywords :
autoregressive processes; forecasting theory; fuzzy set theory; iterative methods; knowledge based systems; neural nets; search problems; time series; NCSTAR; forecasting model; fuzzy rule-based system; grid search procedure; local search algorithm; mathematically sound building procedure; memetic algorithm; model fitting procedure; neuro-coefficient smooth transition autoregressive model; parameter estimation; regime-switching model; statistically founded iterative building procedure; time series forecasting; time series modeling; Biological system modeling; Buildings; Computational modeling; Optimization; Sociology; Time series analysis; Autoregression; memetic algorithms; neuro-coefficient smooth transition autoregressive model (NCSTAR); regime-switching models; threshold autoregressive model (TAR);
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2012.2216898