Time series forecasting has widespread applications in urban life ranging from air quality monitoring to traffic analysis. However, accurate time series forecasting is challenging because real-world time series suffer from the distribution shift problem, where their statistical properties change over time. Despite extensive solutions to distribution shifts in domain adaptation or generalization, they fail to function effectively in unknown, constantly-changing distribution shifts, which are common in time series. In this paper, we propose Hyper Time- Series Forecasting (HTSF), a hypernetwork-based framework for accurate time series forecasting under distribution shift. HTSF jointly learns the time-varying distributions and the corresponding forecasting models in an end-to-end fashion. Specifically, HTSF exploits the hyper layers to learn the best characterization of the distribution shifts, generating the model parameters for the main layers to make accurate predictions. We implement HTSF as an extensible framework that can incorporate diverse time series forecasting models such as RNNs and Transformers. Extensive experiments on 9 benchmarks demonstrate that HTSF achieves state-of-the-art performances.
翻译:时间序列预测在城市生活中广泛应用,从空气质量监测到交通分析。但是,准确的时间序列预测具有挑战性,因为真实世界时间序列受到分布变化问题的影响,其统计特性随时间推移而变化。尽管对领域适应或概括性分布变化有广泛的解决方案,但是它们未能在时间序列中常见的未知的、不断变化的分布变化中有效发挥作用。在本文中,我们提出了超时序列预测(HTSF),这是一个基于超网络的框架,用于在分布变化中准确的时间序列预测。HTSF以端到端的方式共同学习时间变化分布分布和相应的预测模型。具体地说,HTSF利用超层学习分配变化的最佳特征,为主要层生成模型参数,以作出准确的预测。我们把HTSF作为扩展框架,可以纳入不同的时间序列预测模型,如RNN和变压器。关于9个基准的广泛实验显示HTSF取得最新业绩。