CAM: Causal additive models, high-dimensional order search and penalized regression
About
We develop estimation for potentially high-dimensional additive structural equation models. A key component of our approach is to decouple order search among the variables from feature or edge selection in a directed acyclic graph encoding the causal structure. We show that the former can be done with nonregularized (restricted) maximum likelihood estimation while the latter can be efficiently addressed using sparse regression techniques. Thus, we substantially simplify the problem of structure search and estimation for an important class of causal models. We establish consistency of the (restricted) maximum likelihood estimator for low- and high-dimensional scenarios, and we also allow for misspecification of the error distribution. Furthermore, we develop an efficient computational algorithm which can deal with many variables, and the new method's accuracy and performance is illustrated on simulated and real data.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Causal Discovery | Sachs real-world data protein signaling network | SHD12 | 26 | |
| Causal Discovery | ER5 (n=30, h=5) | FDR0.77 | 18 | |
| Causal Discovery | SF5 (n=30, h=5) | FDR77 | 18 | |
| Bivariate Causal Discovery | Tübingen | LxCIM (%)45.7 | 16 | |
| Causal Discovery | Syntren | SHD38 | 11 | |
| Causal Discovery | Sachs real data d=11 | SHD10 | 10 | |
| Causal Discovery | Nonlinear structural equation model S4 | FDR0.95 | 9 | |
| Causal Structural Learning | Erdős-Rényi (ER) Model n=1000 S4 (large) | FDR0.94 | 9 | |
| Causal Structural Learning | Erdős-Rényi (ER) Model n=100 S4 (small) | FDR93 | 9 | |
| Causal Structural Learning | Erdős-Rényi (ER) Model n=1000 Scenario S5 (small) | FDR93 | 9 |