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A Novel Hybrid Ensemble Learning Paradigm for Tourism Forecasting

机译:一种新的Hybrid Ensemble学习范式,用于旅游预测

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In this paper, a hybrid forecasting model based on Empirical Mode Decomposition (EMD) and Group Method of Data Handling (GMDH) is proposed to forecast tourism demand. This methodology first decomposes the original visitor arrival series into several Intrinsic Model Function (IMFs) components and one residual component by EMD technique. Then, IMFs components and the residual components is forecasted respectively using GMDH model whose input variables are selected by using Partial Autocorrelation Function (PACF). The final forecasted result for tourism series is produced by aggregating all the forecasted results. For evaluating the performance of the proposed EMD-GMDH methodologies, the monthly data of tourist arrivals from Singapore to Malaysia are used as an illustrative example. Empirical results show that the proposed EMD-GMDH model outperforms the EMD-ARIMA as well as the GMDH and ARIMA (Autoregressive Integrated Moving Average) models without time series decomposition.
机译:本文提出了一种基于经验模型分解(EMD)的混合预测模型和数据处理(GMDH)的组方法,以预测旅游需求。该方法首先通过EMD技术将原始访问者到达系列分解为几个内在模型功能(IMF)组件和一个残余组件。然后,使用MGDH模型预测IMFS组件和残差组件,其通过使用部分自相关函数(PACF)选择输入变量。旅游系列的最终预测结果是通过汇总所有预测结果而产生的。为了评估拟议的EMD-GMDH方法的表现,新加坡到马来西亚的旅游到达的月度数据作为说明性示例。经验结果表明,建议的EMD-GMDH模型优于EMD-Arima以及GMDH和Arima(自回归综合移动平均)模型,无时间序列分解。

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