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ARIMAX-GARCH-WAVELET model for forecasting volatile data

机译:ARIMAX-GARCH-WAVELET模型用于预测易失性数据

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Autoregressive integrated moving average with exogenous variable-Generalized autoregressive conditional het-eroscedastic (ARIMAX-GARCH) model is employed for describing volatile data by incorporating the exogenous variables in the mean-model. Brief description of this model along with its estimation procedure is discussed. For computing out-of-sample forecast using ARIMAX-GARCH model, one need to compute the out-of-sample forecast of exogenous variable first. In the present investigation, the forecasts for exogenous variable have been obtained by using ARIMA methodology as well as by wavelet analysis in frequency domain. As an illustration, wheat yield in Kanpur district of Uttar Pradesh, India with an exogenous variable as maximum temperature at critical root initiation (CRI) stage of wheat crop during 1972 to 2013 have been considered. The forecast of maximum temperature have been obtained using ARIMA and wavelet methodology. The forecast performance has been compared with respect to relative mean absolute prediction error (RMAPE). Finally forecast of wheat yield has been obtained by ARIMAX, ARIMAX-GARCH and ARIMAX-GARCH-WAVELET models. To this end comparison of forecast performance among above three models was carried out using Diebold-Mariano test along with mean absolute prediction error (MAPE), RMAPE and root mean squares error (RMSE). It is found that ARIMAX-GARCH-WAVELET model outperforms other models as far as modelling and forecasting is concerned.
机译:具有外生变量的自回归综合移动平均值-通过将均生模型中包含外生变量,使用广义自回归条件异方差(ARIMAX-GARCH)模型来描述易失性数据。讨论了该模型的简要说明及其估计过程。为了使用ARIMAX-GARCH模型计算样本外预测,需要首先计算外生变量的样本外预测。在本研究中,通过使用ARIMA方法以及频域中的小波分析获得了外生变量的预测。例如,考虑了印度北方邦坎普尔地区的小麦产量,该作物的外生变量是1972年至2013年期间小麦作物的临界根始(CRI)阶段的最高温度。使用ARIMA和小波方法已经获得了最高温度的预测。已相对于相对平均绝对预测误差(RMAPE)比较了预测性能。最后,通过ARIMAX,ARIMAX-GARCH和ARIMAX-GARCH-WAVELET模型获得了小麦单产的预测。为此,使用Diebold-Mariano检验以及平均绝对预测误差(MAPE),RMAPE和均方根误差(RMSE)对上述三个模型的预测性能进行了比较。发现在建模和预测方面,ARIMAX-GARCH-WAVELET模型优于其他模型。

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