Traditionally,
the autoregressive integrated moving average (ARIMA) model has been one of the most widely used linear
models in time series forecasting. However, the ARIMA model cannot easily capture the nonlinear patterns. Support vector
machines (SVMs), a novel neural network technique, have been successfully applied in solving nonlinear regression estimation problems. Therefore, this investigation proposes a hybrid methodology that exploits the unique strength of the ARIMA model and the SVMs model in forecasting stock prices problems. Real data sets of stock prices were used to examine the forecasting accuracy of the proposed model. The results of computational tests are very promising.
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