Variational autoencoders (VAE) are powerful generative models that learn the latent representations of input data as random variables. Recent studies show that VAE can flexibly learn the complex temporal dynamics of time series and achieve more promising forecasting results than deterministic models. However, a major limitation of existing works is that they fail to jointly learn the local patterns (e.g., seasonality and trend) and temporal dynamics of time series for forecasting. Accordingly, we propose a novel hybrid variational autoencoder (HyVAE) to integrate the learning of local patterns and temporal dynamics by variational inference for time series forecasting. Experimental results on four real-world datasets show that the proposed HyVAE achieves better forecasting results than various counterpart methods, as well as two HyVAE variants that only learn the local patterns or temporal dynamics of time series, respectively.
翻译:最新研究表明,VAE可以灵活地学习时间序列复杂的时间动态,并取得比确定性模型更有希望的预测结果。然而,现有工程的一个主要局限性是,它们未能共同学习当地模式(如季节性和趋势)和预测时间序列的时间动态。因此,我们建议采用一个新的混合变异自动变异器(HyVAE),通过时间序列预测的变异推论,将当地模式和时间动态的学习结合起来。四个真实世界数据集的实验结果表明,拟议的HYVAE的预测结果比各种对应方法以及两个仅分别学习时间序列的当地模式或时间动态的HyVAE变异器(HyVAE)分别取得更好的预测结果。</s>