Title of article :
Comparison of the finite mixture of ARMA-GARCH, back propagation neural networks and support-vector machines in forecasting financial returns
Author/Authors :
Altaf Hossain&Mohammed Nasser، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
The use of GARCH type models and computational-intelligence-based techniques for forecasting financial
time series has been proved extremely successful in recent times. In this article, we apply the finite mixture
of ARMA-GARCH model instead of AR or ARMA models to compare with the standard BP and SVM
in forecasting financial time series (daily stock market index returns and exchange rate returns). We do
not apply the pure GARCH model as the finite mixture of the ARMA-GARCH model outperforms the
pure GARCH model. These models are evaluated on five performance metrics or criteria. Our experiment
shows that the SVM model outperforms both the finite mixture of ARMA-GARCH and BP models in
deviation performance criteria. In direction performance criteria, the finite mixture of ARMA-GARCH
model performs better. The memory property of these forecasting techniques is also examined using the
behavior of forecasted values vis-à-vis the original values. Only the SVM model shows long memory
property in forecasting financial returns.
Keywords :
autoregressivemoving average , generalized autoregressive conditional heteroskedastic , BACKPROPAGATION , artificial neural network , support-vector machine
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS