Advances in I.T. infrastructure has led to the collection of longer sequences of time-series. Such sequences are typically non-stationary, exhibiting distribution shifts over time -- a challenging scenario for the forecasting task, due to the problems of covariate shift, and conditional distribution shift. In this paper, we show that deep time-index models possess strong synergies with a meta-learning formulation of forecasting, displaying significant advantages over existing neural forecasting methods in tackling the problems arising from non-stationarity. These advantages include having a stronger smoothness prior, avoiding the problem of covariate shift, and having better sample efficiency. To this end, we propose DeepTime, a deep time-index model trained via meta-learning. Extensive experiments on real-world datasets in the long sequence time-series forecasting setting demonstrate that our approach achieves competitive results with state-of-the-art methods, and is highly efficient. Code is available at https://github.com/salesforce/DeepTime.
翻译:在I.T.基础设施的进步导致收集了较长的时间序列序列的进展。这些序列通常是非静止的,显示随时间推移的分布变化 -- -- 由于共变转移和有条件的分布转移问题,预测任务是一个具有挑战性的假设。在本文中,我们表明深层的时间指数模型与预测的元学习配方具有很强的协同作用,在解决非静态问题的现有神经预报方法上表现出了巨大的优势。这些优势包括:在之前更加顺畅,避免共变转移问题,以及提高取样效率。为此,我们提议了DeepTime,这是一个通过元学习培训的深时间指数模型。在长序列时间序列预测环境中对真实世界数据集进行的广泛实验表明,我们的方法以最先进的方法取得了竞争性的结果,并且效率很高。代码可在 https://github.com/salesforce/DeepTime上查阅。