Abstract
The study proposes and a family of regime switching GARCH neural network models to model volatility. The proposed MS-ARMA-GARCH-NN models allow MS type regime switching in both the conditional mean and conditional variance for time series and further augmented with artificial neural networks to achieve improvement in forecasting capabilities. Gray (1996) RS-GARCH model allows within regime heteroskedasticity with markov switching of Hamilton (1989). Firstly, models are extended to fractional integration and asymmetric power GARCH and MS-ARMA-FIGARCH, MS-ARMA-APGARCH, MS-ARMA-FIAPGARCH models are evaluated and discussed. Secondly, in addition to regime swiching type nonlinearity, neural networks based augmentated models are evaluated and discussed. In this respect, MS-ARMA-GARCH models are augmented with Multi Layer Perceptron (MLP), Radial Basis Function (RBF), Elman type Recurrent NN (Elman RNN), Time lag (delay) Recurrent NN (RNN) and Hybrid MLP models. Therefore, the second model group includes MS-ARMA-GARCH-MLP, MS-ARMA-GARCH-RBF, MS-ARMA-GARCH-ElmanRNN, MS-ARMA-GARCH-RNN and MS-ARMA-GARCH-HybridMLP. Thirdly, fractional integrated versions are augmented with neural networks and denoted as MS-ARMA-FIGARCH-MLP, MS-ARMA-FIGARCH-RBF, MS-ARMA-FIGARCH-ElmanRNN, MS-ARMA-FIGARCH-RNN and MS-ARMA-FIGARCH-HybridMLP. Fourth, by allowing asymmetric power transformations, models are further extended to GARCH models. These models are MS-ARMA-APGARCH-RBF, MS-ARMA-APGARCH-ElmanRNN, MS-ARMA-APGARCH-RNN and MS-ARMA-FIGARCH-HybridMLP. Therefore, a total of four group of GARCH models are proposed and evaluated in the study. In the empirical application section, daily stock returns in ISE100 Istanbul Stock Index are modeled and forecasted. Forecast success is evaluated with MAE, MSE and RMSE criteria. Equal forecast accuracy is tested with modified Diebold-Mariano tests. Accordingly, fractional integration and asymmetric power transformation perform better in modeling the daily returns in IMKB100 stock index compared to the simple GARCH and RS-GARCH model of Gray. Hybrid MLP and time lag recurrent architectures (MS-ARMA-FIAPGARCH-HybridMLP and MS-ARMA-FIAPGARCH-RNN) provided the best forecast and modeling performance. In conclusion, the newly proposed GARCH models have significant forecasting improvement and therefore are promising in various economic applications.
Highlights
In the light of the significant improvements in the econometric techniques and in the computer technologies, modeling the financial time series have been subject to accelerated empirical investigation in the literature
Though all volatility models perform better than the Random walk (RW) model in light of Log Likelihood criteria, as we move from the Generalized ARCH (GARCH) model to asymmetric power GARCH (APGARCH) model, the fit of the models improve
The results for the Asymmetric power GARCH (APGARCH) model show that the calculated power term is 1.35 and the asymmetry is present
Summary
In the light of the significant improvements in the econometric techniques and in the computer technologies, modeling the financial time series have been subject to accelerated empirical investigation in the literature. Following the developments in the nonlinear techniques, analyses focusing on the volatility in financial returns and economic variables are observed to provide significant contributions. It could be stated that important steps have been taken in terms of nonlinear measurement techniques focusing on the instability or stability occurring vis-a-vis encountered volatility. The determination of stability or instability in terms of volatility in the financial markets gains importance especially for analyzing the risk encountered. The volatility of economic data has been explored in econometric literature as a result of the need of modelling uncertainty and risk in the financial returns. The relationship between the financial returns and various important factors such as the trade volume, market price of financial assets, and the relationship between volatility, trade volume, and financial returns have been vigorously investigated [1,2,3,4]
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