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Hybrid time-series models for forecasting agricultural commodity prices

机译:用于预测农产品价格的混合时间序列模型

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Agricultural price forecasting has become a promising area of research in recent times. ARIMA model has been most widely used technique during the last few decades for this purpose. When the assumption of homoscedastic error variance is violated then ARCH/GARCH models are applied in order to capture the changes in the conditional variance of the time-series data. The ANN approach can also be applied in the field of forecasting of real time-series data successfully as an alternative to the traditional forecasting models. Real-world time-series data are rarely pure linear or nonlinear in nature, sometimes contain both the pattern together. In this situation a hybrid approach of combining the forecasts from a linear time-series model (ARIMA) and from a nonlinear time-series model (GARCH, ANN) has the better forecasting performance. The hybrid methodology namely ARIMA-GARCH and ARIMA-ANN have been applied for modelling and forecasting of wholesale potato price in Agra market of India. A comparative assessment has also been made in terms of Mean absolute percentage error (MAPE) and Root mean square error (RMSE) among the hybrid and their individual counterpart as far as forecasting is concerned. It is observed that ARIMA-ANN hybrid model outperforms the other combinations and individual counterpart for the data under consideration. R software package has been used for the data analysis.
机译:最近,农产品价格预测已成为一个有前途的研究领域。为此目的,ARIMA模型是最近几十年来使用最广泛的技术。当违反了同方误差方差的假设时,则应用ARCH / GARCH模型以捕获时间序列数据的条件方差的变化。人工神经网络方法也可以成功地应用于实时序列数据的预测,以替代传统的预测模型。实际的时间序列数据实际上很少是纯线性或非线性的,有时会同时包含这两种模式。在这种情况下,将线性时间序列模型(ARIMA)和非线性时间序列模型(GARCH,ANN)的预测相结合的混合方法具有更好的预测性能。 ARIMA-GARCH和ARIMA-ANN的混合方法已用于印度阿格拉市场马铃薯批发价格的建模和预测。就预测而言,还对混合动力及其各自对应物之间的平均绝对百分比误差(MAPE)和均方根误差(RMSE)进行了比较评估。可以看出,对于所考虑的数据,ARIMA-ANN混合模型的性能优于其他组合和单个对等模型。 R软件包已用于数据分析。

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