Enhanced Linear and Vision Transformer-Based Architectures for Time Series Forecasting

Musleh Alharthi, Ausif Mahmood
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Abstract

Time series forecasting has been a challenging area in the field of Artificial Intelligence. Various approaches such as linear neural networks, recurrent linear neural networks, Convolutional Neural Networks, and recently transformers have been attempted for the time series forecasting domain. Although transformer-based architectures have been outstanding in the Natural Language Processing domain, especially in autoregressive language modeling, the initial attempts to use transformers in the time series arena have met mixed success. A recent important work indicating simple linear networks outperform transformer-based designs. We investigate this paradox in detail comparing the linear neural network- and transformer-based designs, providing insights into why a certain approach may be better for a particular type of problem. We also improve upon the recently proposed simple linear neural network-based architecture by using dual pipelines with batch normalization and reversible instance normalization. Our enhanced architecture outperforms all existing architectures for time series forecasting on a majority of the popular benchmarks.
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基于线性和视觉变换器的时间序列预测增强型架构
时间序列预测一直是人工智能领域一个具有挑战性的领域。线性神经网络、递归线性神经网络、卷积神经网络以及最近的变换器等各种方法都被尝试用于时间序列预测领域。虽然基于变换器的架构在自然语言处理领域,尤其是自回归语言建模领域表现出色,但在时间序列领域使用变换器的初步尝试却喜忧参半。最近的一项重要工作表明,简单线性网络的性能优于基于变换器的设计。我们通过比较线性神经网络和基于变换器的设计,详细研究了这一悖论,并深入探讨了为什么某种方法更适合特定类型的问题。我们还改进了最近提出的基于简单线性神经网络的架构,使用了批量归一化和可逆实例归一化的双流水线。在大多数流行基准上,我们的增强型架构在时间序列预测方面优于所有现有架构。
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