Causal normalizing flows: from theory to practice
About
In this work, we deepen on the use of normalizing flows for causal reasoning. Specifically, we first leverage recent results on non-linear ICA to show that causal models are identifiable from observational data given a causal ordering, and thus can be recovered using autoregressive normalizing flows (NFs). Second, we analyze different design and learning choices for causal normalizing flows to capture the underlying causal data-generating process. Third, we describe how to implement the do-operator in causal NFs, and thus, how to answer interventional and counterfactual questions. Finally, in our experiments, we validate our design and training choices through a comprehensive ablation study; compare causal NFs to other approaches for approximating causal models; and empirically demonstrate that causal NFs can be used to address real-world problems, where the presence of mixed discrete-continuous data and partial knowledge on the causal graph is the norm. The code for this work can be found at https://github.com/psanch21/causal-flows.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Average Treatment Effect Estimation | M3 Synthetic Dataset | ATE0.87 | 8 | |
| Average Treatment Effect Estimation | M2 Synthetic | ATE1.01 | 8 | |
| Average Treatment Effect Estimation | M1 Synthetic Dataset | ATE4.23 | 8 |