Hybrid Top-Down Global Causal Discovery with Local Search for Linear and Nonlinear Additive Noise Models

Abstract

Learning the unique directed acyclic graph corresponding to an unknown causal model is a challenging task. Methods based on functional causal models can identify a unique graph, but either suffer from the curse of dimensionality or impose strong parametric assumptions. To address these challenges, we propose a novel hybrid approach for global causal discovery in observational data that leverages local causal substructures. We first present a topological sorting algorithm that leverages ancestral relationships in linear structural causal models to establish a compact top-down hierarchical ordering, encoding more causal information than linear orderings produced by existing methods. We demonstrate that this approach generalizes to nonlinear settings with arbitrary noise. We then introduce a nonparametric constraint-based algorithm that prunes spurious edges by searching for local conditioning sets, achieving greater accuracy than current methods. We provide theoretical guarantees for correctness and worst-case polynomial time complexities, with empirical validation on synthetic data.

Cite

Text

Hiremath et al. "Hybrid Top-Down Global Causal Discovery with Local Search for Linear and Nonlinear Additive Noise Models." Neural Information Processing Systems, 2024. doi:10.52202/079017-4231

Markdown

[Hiremath et al. "Hybrid Top-Down Global Causal Discovery with Local Search for Linear and Nonlinear Additive Noise Models." Neural Information Processing Systems, 2024.](https://mlanthology.org/neurips/2024/hiremath2024neurips-hybrid/) doi:10.52202/079017-4231

BibTeX

@inproceedings{hiremath2024neurips-hybrid,
  title     = {{Hybrid Top-Down Global Causal Discovery with Local Search for Linear and Nonlinear Additive Noise Models}},
  author    = {Hiremath, Sujai and Maasch, Jacqueline and Gao, Mengxiao and Ghosal, Promit and Gan, Kyra},
  booktitle = {Neural Information Processing Systems},
  year      = {2024},
  doi       = {10.52202/079017-4231},
  url       = {https://mlanthology.org/neurips/2024/hiremath2024neurips-hybrid/}
}