Modeling Markov switching ARMA-GARCH neural networks models and an application to forecasting stock returns
- PMID: 24977200
- PMCID: PMC3997987
- DOI: 10.1155/2014/497941
Modeling Markov switching ARMA-GARCH neural networks models and an application to forecasting stock returns
Abstract
The study has two aims. The first aim is to propose a family of nonlinear GARCH models that incorporate fractional integration and asymmetric power properties to MS-GARCH processes. The second purpose of the study is to augment the MS-GARCH type models with artificial neural networks to benefit from the universal approximation properties to achieve improved forecasting accuracy. Therefore, the proposed Markov-switching MS-ARMA-FIGARCH, APGARCH, and FIAPGARCH processes are further augmented with MLP, Recurrent NN, and Hybrid NN type neural networks. The MS-ARMA-GARCH family and MS-ARMA-GARCH-NN family are utilized for modeling the daily stock returns in an emerging market, the Istanbul Stock Index (ISE100). Forecast accuracy is evaluated in terms of MAE, MSE, and RMSE error criteria and Diebold-Mariano equal forecast accuracy tests. The results suggest that the fractionally integrated and asymmetric power counterparts of Gray's MS-GARCH model provided promising results, while the best results are obtained for their neural network based counterparts. Further, among the models analyzed, the models based on the Hybrid-MLP and Recurrent-NN, the MS-ARMA-FIAPGARCH-HybridMLP, and MS-ARMA-FIAPGARCH-RNN provided the best forecast performances over the baseline single regime GARCH models and further, over the Gray's MS-GARCH model. Therefore, the models are promising for various economic applications.
References
-
- Brooks C. Predicting stock index volatility: can Market Volume help? Journal of Forecasting. 1998;17:59–98.
-
- Campbell JY, Grossman SJ, Wang J. Trading volume and serial correlation in stock returns. The Quarterly Journal of Economics. 1993;108:905–936.
-
- Hiemstra C, Jones JD. Testing for linear and nonlinear Granger causality in the stock price-volume relation. The Journal of Finance. 1994;49:1639–1664.
-
- Wang X, Phua PH, Lin W. Stock market prediction using neural networks: does trading volume help in short-term prediction?. Proceedings of IEEE International Joint Conference on Neural Networks,; 2003; pp. 2438–2442.
-
- Engle RF. Autoregressive conditional heteroskedasticity with estimates of the variance of United Kingdom inflation. Econometrica. 1982;50:987–1007.