DirectLiNGAM: A direct method for learning a linear non-Gaussian structural equation model
About
Structural equation models and Bayesian networks have been widely used to analyze causal relations between continuous variables. In such frameworks, linear acyclic models are typically used to model the data-generating process of variables. Recently, it was shown that use of non-Gaussianity identifies the full structure of a linear acyclic model, i.e., a causal ordering of variables and their connection strengths, without using any prior knowledge on the network structure, which is not the case with conventional methods. However, existing estimation methods are based on iterative search algorithms and may not converge to a correct solution in a finite number of steps. In this paper, we propose a new direct method to estimate a causal ordering and connection strengths based on non-Gaussianity. In contrast to the previous methods, our algorithm requires no algorithmic parameters and is guaranteed to converge to the right solution within a small fixed number of steps if the data strictly follows the model.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Causal Discovery | Synthetic DAGs | TPR1 | 125 | |
| DAG learning | Synthetic (test) | SID17 | 101 | |
| DAG learning | Synthetic DAGs (100 nodes, 400 edges) v1 | SHD1.88e+4 | 51 | |
| Causal Discovery | Synthetic Exponential Noise | ABIC Score44.29 | 30 | |
| Causal Structure Learning | Gumbel synthetic dataset | Adj Precision0.91 | 30 | |
| Structure learning | Exponential | Adj Precision91 | 30 | |
| Causal Discovery | Sachs real-world data protein signaling network | SHD29 | 26 | |
| Causal Discovery | Synthetic DAG Datasets | Runtime (s)1.06e+3 | 14 | |
| Causal Discovery | AutoMPG | Structural Hamming Distance8 | 12 | |
| Causal Discovery | DWDClimate | Structural Hamming Distance10 | 12 |