A DEEP LEARNING APPROACH FOR FORECASTING GLOBAL COMMODITIES PRICES

A. S. Elberawi, M. Belal
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引用次数: 3

Abstract

Forecasting future values of time-series data is a critical task in many disciplines including financial planning and decision-making. Researchers and practitioners in statistics apply traditional statistical methods (such as ARMA, ARIMA, ES, and GARCH) for a long time with varying. accuracies. Deep learning provides more sophisticated and non-linear approximation that supersede traditional statistical methods in most cases. Deep learning methods require minimal features engineering compared to other methods; it adopts an end-to-end learning methodology. In addition, it can handle a huge amount of data and variables. Financial time series forecasting poses a challenge due to its high volatility and non-stationarity nature. This work presents a hybrid deep learning model based on recurrent neural network and Autoencoders techniques to forecast commodity materials' global prices. Results showbetter accuracy compared to traditional regression methods for short-term forecast horizons (1,2,3 and 7days).
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一种预测全球商品价格的深度学习方法
预测时间序列数据的未来价值是包括财务规划和决策在内的许多学科的关键任务。统计领域的研究者和实践者长期以来应用传统的统计方法(如ARMA、ARIMA、ES和GARCH),结果各不相同。精度。深度学习提供了更复杂和非线性的近似,在大多数情况下取代了传统的统计方法。与其他方法相比,深度学习方法需要最少的特征工程;它采用端到端学习方法。此外,它还可以处理大量的数据和变量。金融时间序列的高波动性和非平稳性给其预测带来了挑战。这项工作提出了一种基于循环神经网络和自动编码器技术的混合深度学习模型,用于预测商品材料的全球价格。结果表明,与传统回归方法相比,短期预测(1、2、3和7天)的精度更高。
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