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Resumen de CO^2RBFN for Short and Medium Term Forecasting of the Extra-Virgin Olive Oil Price

M. D. Perez, Pedro Pérez Recuerda, María del Pilar Frías Bustamante Árbol académico, A.J. Rivera, C.J. Carmona, Manuel Parras

  • In this paper an adaptation of CO2RBFN, evolutionary COoperativeCOmpetitive algorithm for Radial Basis Function Networks design, applied to the prediction of the extra-virgin olive oil price is presented. In this algorithm each individual represents a neuron or Radial Basis Function and the population, the wholenetwork. Individuals compite for survival but must cooperate to built the definite solution. The forecasting of the extra-virgin olive oil price is addressed as a time series forecasting problem. In the experimentation medium-term predictions are obtained for first time with these data. Also short-term predictions with new data arecalculated. The results of CO2RBFN have been compared with the traditional statistic forecasting Auto-Regressive Integrated Moving Average method and other data mining methods such as other neural networks models, a support vector machine method or a fuzzy system.


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