Log Neural Controlled Differential Equations: The Lie Brackets Make a Difference
About
The vector field of a controlled differential equation (CDE) describes the relationship between a control path and the evolution of a solution path. Neural CDEs (NCDEs) treat time series data as observations from a control path, parameterise a CDE's vector field using a neural network, and use the solution path as a continuously evolving hidden state. As their formulation makes them robust to irregular sampling rates, NCDEs are a powerful approach for modelling real-world data. Building on neural rough differential equations (NRDEs), we introduce Log-NCDEs, a novel, effective, and efficient method for training NCDEs. The core component of Log-NCDEs is the Log-ODE method, a tool from the study of rough paths for approximating a CDE's solution. Log-NCDEs are shown to outperform NCDEs, NRDEs, the linear recurrent unit, S5, and MAMBA on a range of multivariate time series datasets with up to $50{,}000$ observations.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multivariate Time Series Classification | SelfRegSCP1 | Accuracy87.8 | 25 | |
| Multivariate Time Series Classification | MotorImagery UEA (test) | Accuracy60 | 11 | |
| Time-series classification | EigenWorms UEA (test) | Accuracy95 | 11 | |
| Multivariate Time Series Classification | SelfRegulationSCP2 UEA (test) | Accuracy58.2 | 11 | |
| Multivariate Time Series Classification | EthanolConcentration UEA (test) | Accuracy29.9 | 11 | |
| Multivariate Time Series Classification | Heartbeat UEA (test) | Accuracy75.8 | 11 |