Abstract:
Some characteristics, such as non-linear dependencies and heterogeneity in variance,
make the modeling of financial time series, a complex task. Financial systems
turn out to be more complex with the effects of diversified events occurring at different
time lags. Such effects cause non-static environments. Consequently, the accuracy
of forecasts derived from conventional Time Series Models, will be diminished. Under
such circumstances, conventional time series models fail to achieve the expected
accuracy and inapplicability of these models arise.
This thesis is focused on formulating a novel approach for developing a dynamic
forecasting model, with the perspective of incorporating dynamic environmental conditions.
The study claims that the accuracy can be improved by utilizing only the most
appropriate subset from the time series. Such subset is supposed to reflect effects from
environmental conditions similar to that of the forecasting time point.
In order to capture contrasting effects of dynamic environmental conditions, an improved
two-step clustering algorithm is proposed. The first step is designed to cluster
dynamic environments, based on the attributes representing reactions of the time series.
In the second step, the time series is clustered by assigning cluster numbers of dynamic
environments attached to respective time points. Moreover, the novel algorithm is capable
in eliminating the effect of noise objects on clustering result.
Finally, cluster-wise hybridized models are formulated by integrating time series
mode decomposition and feature extraction through a feed forward neural network
(DEC-HyF model). Intension of mode decomposition is motivated by the evident diversity
in the volatility process. Sensitivity of time series, towards some sets of dynamic
environments even within the same clusters, leads to extract such features and incorporate
those in the model. Hybrid modeling concept is introduced to enable the model to
capture diverse characteristics witnessed in financial time series.
Results observed from the Forex trading application, reveled a significant contribution
of clustering procedure in comparison to the models which disregards clustering.
Final result confirms, that the integration proposed by means of DEC-HyF model
outperforms the other tested integration schemes, specifically, clustering-decomposition
(EMD-ANN) and clustering-decomposition-volatility estimation (EMD-GARCH-ANN).
Moreover, the proposed expert system for Forex trading, based on the DEC-HyF model
emphasized 76% of opportunities with positive aggregated profits over the forecasting
period.