Core: Transferable Long-Range Time Series Forecasting Enhanced by Covariates-Guided Representation

Xin-Yi Li, Pei-Nan Zhong, Dingquan Chen, Yubin Yang
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Abstract

In recent years, long-range time series forecasting has been actively studied and has shown promising results. However, since these methods mainly focus on predicting time series with a fixed dimension, they are inapplicable to the large-scale and ever-changing datasets that are common in real-world applications. Additionally, existing methods only take a window of the near past as input, which prevents the models from learning persistent historical patterns. To tackle these problems, we propose CoRe, a novel transferable long-term forecasting method enhanced by Covariates-guided Representation. By encoding the input series into a dense vector, CoRe is able to extract instance-wise global features. Specifically, the representation is learned by modeling the correlation between the target series and constructed auxiliary covariates, which is implemented by our proposed cross-dependency network. Comprehensive experiments on six real-world datasets show that CoRe achieves overall state-of-the-art results and can transfer to unseen data with stable performance.
核心:协变量引导表示法增强的可转移长期时间序列预测
近年来,长期时间序列预测得到了积极的研究,并取得了可喜的成果。然而,由于这些方法主要集中于预测具有固定维度的时间序列,因此它们不适用于实际应用中常见的大规模和不断变化的数据集。此外,现有的方法只接受最近的一个窗口作为输入,这阻止了模型学习持久的历史模式。为了解决这些问题,我们提出了一种新的可转移的长期预测方法CoRe,该方法由协变量引导表示增强。通过将输入序列编码为密集向量,CoRe能够提取实例的全局特征。具体来说,通过对目标序列和构建的辅助协变量之间的相关性建模来学习表征,这是由我们提出的交叉依赖网络实现的。在六个真实数据集上的综合实验表明,CoRe达到了最先进的整体效果,并且可以稳定地转移到未见过的数据。
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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