Causal Structure Learning for Dynamical Systems with Theoretical Score Analysis
About
Real world systems evolve in continuous-time according to their underlying causal relationships, yet their dynamics are often unknown. Existing approaches to learning such dynamics typically either discretize time -- leading to poor performance on irregularly sampled data -- or ignore the underlying causality. We propose CaDyT, a novel method for causal discovery on dynamical systems addressing both these challenges. In contrast to state-of-the-art causal discovery methods that model the problem using discrete-time Dynamic Bayesian networks, our formulation is grounded in Difference-based causal models, which allow milder assumptions for modeling the continuous nature of the system. CaDyT leverages exact Gaussian Process inference for modeling the continuous-time dynamics which is more aligned with the underlying dynamical process. We propose a practical instantiation that identifies the causal structure via a greedy search guided by the Algorithmic Markov Condition and Minimum Description Length principle. Our experiments show that CaDyT outperforms state-of-the-art methods on both regularly and irregularly-sampled data, discovering causal networks closer to the true underlying dynamics.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Causal Discovery | Synthetic Double-Mass spring system | NSHD0.25 | 9 | |
| Causal Discovery | Rössler Oscillator | NSHD0.166 | 5 | |
| Causal Discovery | Diamond Causal Graph Simulated (Regular) | NSHD0.106 | 5 | |
| Causal Discovery | Diamond Causal Graph Simulated (Irregular) | NSHD0.087 | 5 | |
| Causal Discovery | Double-Linear Spring system Real | NSHD0.375 | 5 | |
| Causal structure discovery | DblMass (test) | AUPRC0.79 | 4 | |
| Causal structure discovery | DblLinear (test) | AUPRC0.79 | 4 | |
| Causal structure discovery | Rössler (Rossler Oscillator) (test) | AUPRC55 | 4 |