Sensors in cyber-physical systems often capture interconnected processes and thus emit correlated time series (CTS), the forecasting of which enables important applications. The key to successful CTS forecasting is to uncover the temporal dynamics of time series and the spatial correlations among time series. Deep learning-based solutions exhibit impressive performance at discerning these aspects. In particular, automated CTS forecasting, where the design of an optimal deep learning architecture is automated, enables forecasting accuracy that surpasses what has been achieved by manual approaches. However, automated CTS solutions remain in their infancy and are only able to find optimal architectures for predefined hyperparameters and scale poorly to large-scale CTS. To overcome these limitations, we propose SEARCH, a joint, scalable framework, to automatically devise effective CTS forecasting models. Specifically, we encode each candidate architecture and accompanying hyperparameters into a joint graph representation. We introduce an efficient Architecture-Hyperparameter Comparator (AHC) to rank all architecture-hyperparameter pairs, and we then further evaluate the top-ranked pairs to select a final result. Extensive experiments on six benchmark datasets demonstrate that SEARCH not only eliminates manual efforts but also is capable of better performance than manually designed and existing automatically designed CTS models. In addition, it shows excellent scalability to large CTS.
翻译:网络物理系统中的传感器往往能够捕捉相互关联的过程,从而释放相关时间序列(CTS),而时间序列的预测使重要应用能够发挥作用。CTS成功预测的关键是发现时间序列的时间动态和时间序列之间的空间相关性。深层次的学习解决方案在辨别这些方面表现出令人印象深刻的性能。特别是,在设计最佳深层学习结构的自动化情况下,CTS预测能够预测出比人工方法所达到的要高的准确性。然而,自动的CTS解决方案仍然处于初级阶段,只能找到预设的超参数的最佳结构,而对于大型 CTS来说,其规模差。为了克服这些局限性,我们建议SEARCH(一个联合的、可扩展的框架)来自动设计有效的CTS预报模型。具体地说,我们将每个候选架构和伴随的超参数编码成一个联合图示。我们引入一个高效的架构-功能参数配置器(AHCSHC)来排列所有结构-精准的对子,我们随后只能进一步评估顶级的双对选择最终结果的最佳架构。在六种手动模型上设计得力的大规模实验也展示了更好的业绩。</s>