From simple to complex: a sequential method for enhancing time series forecasting with deep learning

Pub Date : 2024-05-14 DOI:10.1093/jigpal/jzae030
M J Jiménez-Navarro, M Martínez-Ballesteros, F Martínez-Álvarez, A Troncoso, G Asencio-Cortés
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Abstract

Time series forecasting is a well-known deep learning application field in which previous data are used to predict the future behavior of the series. Recently, several deep learning approaches have been proposed in which several nonlinear functions are applied to the input to obtain the output. In this paper, we introduce a novel method to improve the performance of deep learning models in time series forecasting. This method divides the model into hierarchies or levels from simpler to more complex ones. Simpler levels handle smoothed versions of the input, whereas the most complex level processes the original time series. This method follows the human learning process where general/simpler tasks are performed first, and afterward, more precise/harder ones are accomplished. Our proposed methodology has been applied to the LSTM architecture, showing remarkable performance in various time series. In addition, a comparison is reported including a standard LSTM and novel methods such as DeepAR, Temporal Fusion Transformer, NBEATS and Echo State Network.
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从简单到复杂:利用深度学习增强时间序列预测的连续方法
时间序列预测是一个著名的深度学习应用领域,它利用以前的数据来预测序列的未来行为。最近,人们提出了几种深度学习方法,其中将几个非线性函数应用于输入以获得输出。在本文中,我们介绍了一种新方法来提高深度学习模型在时间序列预测中的性能。这种方法将模型划分为从简单到复杂的层次或级别。较简单的层次处理输入的平滑版本,而最复杂的层次处理原始时间序列。这种方法遵循人类的学习过程,即先完成一般/较简单的任务,然后再完成较精确/较困难的任务。我们提出的方法已应用于 LSTM 架构,在各种时间序列中都表现出了卓越的性能。此外,报告还比较了标准 LSTM 和 DeepAR、时态融合转换器、NBEATS 和回声状态网络等新型方法。
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