Financial Time Series Forecasting Using Hybrid
Wavelet-Neural Model
Jovana Božić and Djordje Babić
School of Computing, University Union, Serbia
Abstract: In this paper, we examine and discuss results of financial time
series prediction by using a combination of wavelet transform, neural networks
and statistical time series analytical techniques. The analyzed hybrid model
combines the capabilities of wavelet packet transform and neural networks that
can capture hidden but crucial structure attributes embedded in the time
series. The input data is decomposed into a wavelet representation using two
different resolution levels. For each of the new time series, a neural network
is created, trained and used for prediction. In order to create an aggregate
forecast, the individual predictions are combined with statistical features
extracted from the original input. Additional to the conclusion that the
increase in resolution level does not improve the prediction accuracy, the
analysis of obtained results indicates that the suggested model presents
satisfactory predictor. The results also serve as an indication that denoising
process generates more accurate results when applied.
Keywords: Time-series forecasting, wavelet packet transform, neural networks.
Received November 23, 2014; accepted January 20, 2016