Recent years have witnessed deep neural networks gaining increasing popularity in the field of time series forecasting. A primary reason of their success is their ability to effectively capture complex temporal dynamics across multiple related time series. However, the advantages of these deep forecasters only start to emerge in the presence of a sufficient amount of data. This poses a challenge for typical forecasting problems in practice, where one either has a small number of time series, or limited observations per time series, or both. To cope with the issue of data scarcity, we propose a novel domain adaptation framework, Domain Adaptation Forecaster (DAF), that leverages the statistical strengths from another relevant domain with abundant data samples (source) to improve the performance on the domain of interest with limited data (target). In particular, we propose an attention-based shared module with a domain discriminator across domains as well as private modules for individual domains. This allows us to jointly train the source and target domains by generating domain-invariant latent features while retraining domain-specific features. Extensive experiments on various domains demonstrate that our proposed method outperforms state-of-the-art baselines on synthetic and real-world datasets.
翻译:近些年来,深神经网络在时间序列预测领域越来越受欢迎,其成功的一个主要原因是它们能够有效捕捉到多个相关时间序列的复杂时间动态。然而,这些深度预报者的优势只是在有足够数据的情况下才开始出现。这对典型的实际预测问题提出了挑战,即一个人要么有少量的时间序列,或者每个时间序列的观测有限,或者两者兼而有之。为了应对数据稀缺问题,我们提议了一个新的领域适应框架,即Dome适应预报器(DAF),它利用来自另一个相关领域的统计优势,利用丰富的数据样本(来源)来利用有限数据(目标)来改进感兴趣的领域的绩效。特别是,我们提议了一个基于关注的共享模块,与一个领域歧视者共享,以及各个领域的私人模块共享。这使我们能够联合培训源和目标领域,在对特定领域特征进行再培训的同时生成域内不易变的潜伏特征。关于不同领域的广泛实验表明,我们提出的方法在合成和现实世界数据集上超越了最新基线。