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Predictive Analytics for Thermal Coal Prices Using Neural Networks …   313

                       Developed Neural Networks to Predict Coal Price Relative to
                       The Future Quarter

                          The selected architecture and the selected set of inputs were utilized to establish a
                       final architecture. The neural network was trained with 63 samples. The next step is to
                       predict with 32 data samples of the 95 and neural networks with 8 and 12 input variables
                       (respectively) according to Sβ and the correlational method. The best result was obtained
                       with  the  neural  network  with  12  input  variables  (as  illustrated  in  Figures  8  and  9).
                       Predicting  the  price  of  thermal  coal  was  done  with  a  lower  error  and  capturing  the
                       movements of the market, demonstrating the success of the learning ability of the neural
                       networks and the most important variables.























                       Figure 8. Prediction of thermal coal price relative to the future quarter using 12 input variables.





















                       Figure 9. Prediction of the thermal coal price relative to the future quarter using 8 input variables.
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