FLRNN-FGA: Fractional-Order Lipschitz Recurrent Neural Network with Frequency-Domain Gated Attention Mechanism for Time Series Forecasting

Chunna Zhao, Junjie Ye, Zelong Zhu, Yaqun Huang
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Abstract

Time series forecasting has played an important role in different industries, including economics, energy, weather, and healthcare. RNN-based methods have shown promising potential due to their strong ability to model the interaction of time and variables. However, they are prone to gradient issues like gradient explosion and vanishing gradients. And the prediction accuracy is not high. To address the above issues, this paper proposes a Fractional-order Lipschitz Recurrent Neural Network with a Frequency-domain Gated Attention mechanism (FLRNN-FGA). There are three major components: the Fractional-order Lipschitz Recurrent Neural Network (FLRNN), frequency module, and gated attention mechanism. In the FLRNN, fractional-order integration is employed to describe the dynamic systems accurately. It can capture long-term dependencies and improve prediction accuracy. Lipschitz weight matrices are applied to alleviate the gradient issues. In the frequency module, temporal data are transformed into the frequency domain by Fourier transform. Frequency domain processing can reduce the computational complexity of the model. In the gated attention mechanism, the gated structure can regulate attention information transmission to reduce the number of model parameters. Extensive experimental results on five real-world benchmark datasets demonstrate the effectiveness of FLRNN-FGA compared with the state-of-the-art methods.
FLRNN-FGA:用于时间序列预测的具有频域门控注意机制的分数阶李普希兹循环神经网络
时间序列预测在经济、能源、天气和医疗保健等不同行业发挥着重要作用。基于 RNN 的方法具有很强的时间和变量交互建模能力,因此显示出巨大的潜力。然而,它们容易出现梯度问题,如梯度爆炸和梯度消失。而且预测精度不高。针对上述问题,本文提出了一种具有频域门控注意机制的分数阶 Lipschitz 循环神经网络(FLRNN-FGA)。它由三个主要部分组成:分数阶 Lipschitz 循环神经网络(FLRNN)、频率模块和门控注意机制。在 FLRNN 中,分数阶积分被用来准确描述动态系统。它可以捕捉长期依赖关系,提高预测精度。Lipschitz 权重矩阵用于缓解梯度问题。在频率模块中,通过傅立叶变换将时域数据转换到频域。频域处理可以降低模型的计算复杂度。在门控注意力机制中,门控结构可以调节注意力信息的传递,从而减少模型参数的数量。在五个真实世界基准数据集上的大量实验结果表明,与最先进的方法相比,FLRNN-FGA 非常有效。
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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