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A HYBRID ENSEMBLE FORECASTING MODEL INCORPORATING GLAR AND ANN FOR FOREIGN EXCHANGE RATES

机译:一个融合Glar和ANN的混合集合预测模型,用于外汇汇率

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Exchange rate forecasting is an important and challenging task for both academic researchers and business practitioners. Various theoretical models including both linear and nonlinear approaches have been suggested to model and predict exchange rates. Unfortunately, empirical results often fail to meet theoretical expectations and practical demands. On the basis of these, a hybrid ensemble forecasting model presented in this paper integrating general linear auto-regression (GLAR) with artificial neural networks (ANN) is proposed for obtaining accurate prediction results and ameliorating the forecasting performances. In this study, the performance of the hybrid ensemble model is evaluated by comparing them with two individual forecasting models ― GLAR and ANN, as well as the single hybrid model. Empirical results obtained in this paper reveal that the prediction using the hybrid ensemble model generally performs better than those using the two individual forecasting methods and the single hybrid model in terms of both NMSE and change direction of the exchange rate movement. The paper suggests that the hybrid ensemble model can be used as an alternative forecasting tool for exchange rates to achieve greater forecasting accuracy and improve the prediction quality further.
机译:汇率预测是学术研究人员和商业从业者的一个重要而充满挑战的任务。已经提出了一种包括线性和非线性方法的各种理论模型来模拟和预测汇率。不幸的是,经验结果往往无法满足理论期望和实践需求。在这些基础上,提出了一种与人工神经网络(ANN)的一般线性自动回归(GLAR)呈现的混合集合预测模型,用于获得准确的预测结果并改善预测性能。在这项研究中,通过将它们与两个个人预测模型进行比较来评估混合合奏模型的性能 - GLAR和ANN,以及单个混合模型。本文获得的经验结果表明,使用混合合奏模型的预测通常比使用两种单独的预测方法和单个混合模型的预测更好地执行汇率运动的改变方向。本文表明,混合集合模型可用作汇率的替代预测工具,以实现更大的预测精度并进一步提高预测质量。

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