Spatial-Temporal Identity: A Simple yet Effective Baseline for Multivariate Time Series Forecasting
About
Multivariate Time Series (MTS) forecasting plays a vital role in a wide range of applications. Recently, Spatial-Temporal Graph Neural Networks (STGNNs) have become increasingly popular MTS forecasting methods due to their state-of-the-art performance. However, recent works are becoming more sophisticated with limited performance improvements. This phenomenon motivates us to explore the critical factors of MTS forecasting and design a model that is as powerful as STGNNs, but more concise and efficient. In this paper, we identify the indistinguishability of samples in both spatial and temporal dimensions as a key bottleneck, and propose a simple yet effective baseline for MTS forecasting by attaching Spatial and Temporal IDentity information (STID), which achieves the best performance and efficiency simultaneously based on simple Multi-Layer Perceptrons (MLPs). These results suggest that we can design efficient and effective models as long as they solve the indistinguishability of samples, without being limited to STGNNs.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Traffic Forecasting | PeMS08 | RMSE23.28 | 166 | |
| Traffic Forecasting | METR-LA | -- | 127 | |
| Traffic Forecasting | PeMS07 | MAE19.61 | 94 | |
| Multivariate Time-series Forecasting | PeMS04 | -- | 74 | |
| Traffic Flow Forecasting | PEMS03 (test) | MAE15.33 | 49 | |
| Air quality forecasting | KnowAir | MAE8.14 | 45 | |
| Air quality forecasting | LargeAQ | MAE15.79 | 45 | |
| Traffic Forecasting | Tokyo JARTIC 2021 (test) | MAE6.08 | 44 | |
| Traffic Forecasting | METR-LA 30min horizon 6 | MAE3.19 | 44 | |
| Traffic Forecasting | PEMS-03 Long-term (24 -> 24avg) | MAE17.07 | 30 |