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Parameter optimization of Brown's and Holt's double exponential smoothing using golden section method for predicting Indonesian Crude Oil Price (ICP)

机译:黄金分割方法对布朗和霍尔特双指数平滑的参数优化,以预测印尼原油价格(ICP)

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Oil fuel is a vital necessity for the people of Indonesia. Government policy that diverts subsidy and transfers the prices to economic mechanisms can make fuel prices fluctuate irregularly so that it can bring startled to the public if it is not anticipated with preventive measures. One indicator influencing fuel prices in Indonesia is the Indonesian Crude Oil Price (ICP) so that the forecasting mechanism to predict ICP becomes important. The exponential smoothing method is one of the time series prediction models that can be used to predict ICP. The problem arising in this method is to determine the optimal parameters to minimize the forecast error. This research focuses on the parameters optimization using golden section method. Data used in this research are ICP of January 2011 until May 2016. The analysis showed that the data is trend patterned so it is appropriate to use double exponential smoothing (DES) method from Brown and Holt. Data is divided into training and testing data in the ratio of 80:20. Residual between the prediction results using optimal parameters and testing data used to test the feasibility by performing normality test and randomness test. The results of parameter optimization are the optimum value of α in DES Brown is 0.47206 and the optimum MAPE of 13.061%, while in DES Holt the optimum α is 0.56341 and the optimum γ is 0.05463 with the optimum MAPE of 13.063%. Feasibility studies showed that both methods are feasible for prediction. DES Brown was selected as the best model for the prediction based on the value of MAPE and feasibility studies.
机译:石油对印度尼西亚人民来说是至关重要的必需品。转移补贴并将价格转移到经济机制的政府政策会使燃油价格出现不规则波动,因此,如果没有采取预防措施,它会使公众感到震惊。影响印度尼西亚燃料价格的一项指标是印度尼西亚原油价格(ICP),因此预测ICP的预测机制变得很重要。指数平滑方法是可用于预测ICP的时间序列预测模型之一。该方法中出现的问题是确定最佳参数以最小化预测误差。本研究着重于采用黄金分割法进行参数优化。本研究中使用的数据为2011年1月至2016年5月的ICP。分析表明,该数据是趋势图,因此使用Brown和Holt的双指数平滑(DES)方法是合适的。数据按80:20的比例分为训练和测试数据。使用最佳参数的预测结果与用于通过执行正常性测试和随机性测试来检验可行性的测试数据之间的残差。参数优化的结果是,DES Brown中的最佳α值为0.47206,MAPE的最佳值为13.061%,而DES Holt中,最佳α值为0.56341,γ的最佳值为0.05463,MAPE的最佳值为13.063%。可行性研究表明,两种方法都可用于预测。基于MAPE的价值和可行性研究,DES Brown被选为最佳预测模型。

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