Correlated time series (CTS) forecasting plays an essential role in many
cyber-physical systems, where multiple sensors emit time series that capture
interconnected processes. Solutions based on deep learning that deliver
state-of-the-art CTS forecasting performance employ a variety of
spatio-temporal (ST) blocks that are able to model temporal dependencies and
spatial correlations among time series. However, two challenges remain. First,
ST-blocks are designed manually, which is time consuming and costly. Second,
existing forecasting models simply stack the same ST-blocks multiple times,
which limits the model potential. To address these challenges, we propose
AutoCTS that is able to automatically identify highly competitive ST-blocks as
well as forecasting models with heterogeneous ST-blocks connected using diverse
topologies, as opposed to the same ST-blocks connected using simple stacking.
Specifically, we design both a micro and a macro search space to model possible
architectures of ST-blocks and the connections among heterogeneous ST-blocks,
and we provide a search strategy that is able to jointly explore the search
spaces to identify optimal forecasting models. Extensive experiments on eight
commonly used CTS forecasting benchmark datasets justify our design choices and
demonstrate that AutoCTS is capable of automatically discovering forecasting
models that outperform state-of-the-art human-designed models. This is an
extended version of ``AutoCTS: Automated Correlated Time Series Forecasting'',
to appear in PVLDB 2022.Comment: to appear in PVLDB 202