Improving forecasting accuracy using quantile regression neural network combined with unrestricted mixed data sampling

Q3 Mathematics
Umaru Hassan, Mohd Tahir Ismail
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Abstract

A traditional regression method involving time series variables is often observed at the same frequencies. In a situation where the frequencies differ, the higher ones are averaged or aggregated to the lower frequency. A Mixed Data Sampling (MIDAS) regression model was introduced to address such problems. In any country, stakeholders are interested in monitoring and forecasting accurately the Gross Domestic Product (GDP) using the dynamics of macroeconomic variables. We applied the hybrid QRNN-U-MIDAS model to forecast quarterly GDP using monthly and weekly data. The Quantile Regression Neural Network (QRNN) is designed to model nonlinear relationships amongst data sampled at the same frequency. Therefore, we take advantage of QRNN skills using the optimization techniques of gradient descent-based algorithms to optimise the estimated loss function Ea (\tau), and introduce them into the U-MIDAS framework, which can handle mixed data frequencies, and construct a QRNN-U-MIDAS model. The suggested hybrid QRNN-U-MIDAS model was implemented in an R-package that we created to perform both simulation and real-time data applications. The findings indicate that the QRNN-U-MIDAS regression model outperforms competing models in terms of its capacity for prediction across the conditional distribution of a response variable with a comprehensive view of the information contained in the variables, which is lacking in other competing models like U-MIDAS, ANN-U-MIDAS etc. More so, this novel model will add to the existing works of literature on robust forecasting models.
利用分位数回归神经网络结合无限制混合数据采样提高预测精度
涉及时间序列变量的传统回归方法通常在相同频率下观察到。在频率不同的情况下,较高的频率被平均或聚合到较低的频率。引入混合数据采样(MIDAS)回归模型来解决这些问题。在任何国家,利益相关者都对利用宏观经济变量的动态来准确监测和预测国内生产总值(GDP)感兴趣。我们应用混合QRNN-U-MIDAS模型使用月度和每周数据预测季度GDP。分位数回归神经网络(Quantile Regression Neural Network, QRNN)的目的是对相同频率采样数据之间的非线性关系进行建模。因此,我们利用基于梯度下降算法的优化技术来优化估计的损失函数Ea (\tau),并将其引入可以处理混合数据频率的U-MIDAS框架中,构建QRNN-U-MIDAS模型。建议的混合QRNN-U-MIDAS模型在我们创建的r包中实现,用于执行仿真和实时数据应用。研究结果表明,QRNN-U-MIDAS回归模型在对响应变量的条件分布进行预测的能力方面优于其他竞争模型,并能全面了解变量中包含的信息,这是其他竞争模型如U-MIDAS、ANN-U-MIDAS等所缺乏的。更重要的是,这个新颖的模型将增加现有的关于稳健预测模型的文献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.00
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0.00%
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审稿时长
10 weeks
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