Multi-Task Time Series Forecasting With Shared Attention

Zekai Chen, Jiaze E, Xiao Zhang, Hao Sheng, Xiuzhen Cheng
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引用次数: 9

Abstract

Time series forecasting is a key component in many industrial and business decision processes and recurrent neural network (RNN) based models have achieved impressive progress on various time series forecasting tasks. However, most of the existing methods focus on single-task forecasting problems by learning separately based on limited supervised objectives, which often suffer from insufficient training instances. As the Transformer architecture and other attention-based models have demonstrated its great capability of capturing long term dependency, we propose two self-attention based sharing schemes for multi-task time series forecasting which can train jointly across multiple tasks. We augment a sequence of paralleled Transformer encoders with an external public multi-head attention function, which is updated by all data of all tasks. Experiments on a number of real-world multi-task time series forecasting tasks show that our proposed architectures can not only outperform the state-of-the-art single-task forecasting baselines but also outperform the RNN-based multi-task forecasting method.
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具有共同关注的多任务时间序列预测
时间序列预测是许多工业和商业决策过程中的关键组成部分,基于循环神经网络(RNN)的模型在各种时间序列预测任务中取得了令人瞩目的进展。然而,现有的方法大多集中在基于有限监督目标的单独学习的单任务预测问题上,往往存在训练实例不足的问题。由于Transformer体系结构和其他基于注意力的模型已经证明了其捕获长期依赖性的强大能力,我们提出了两种基于自注意力的多任务时间序列预测共享方案,它们可以跨多个任务进行联合训练。我们增加了一个外部公共多头关注功能的并行变压器编码器序列,该功能由所有任务的所有数据更新。在多个现实世界多任务时间序列预测任务上的实验表明,我们提出的架构不仅优于最先进的单任务预测基线,而且优于基于rnn的多任务预测方法。
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