RCD: Repetitive Causal Discovery of Linear Non-Gaussian Acyclic Models with Latent Confounders

Abstract

Causal discovery from data affected by latent confounders is an important and difficult challenge. Causal functional model-based approaches have not been used to present variables whose relationships are affected by latent confounders, while some constraint-based methods can present them. This paper proposes a causal functional model-based method called repetitive causal discovery (RCD) to discover the causal structure of observed variables affected by latent confounders. RCD repeats inferring the causal directions between a small number of observed variables and determines whether the relationships are affected by latent confounders. RCD finally produces a causal graph where a bi-directed arrow indicates the pair of variables that have the same latent confounders, and a directed arrow indicates the causal direction of a pair of variables that are not affected by the same latent confounder. The results of experimental validation using simulated data and real-world data confirmed that RCD is effective in identifying latent confounders and causal directions between observed variables.

Cite

Text

Maeda and Shimizu. "RCD: Repetitive Causal Discovery of Linear Non-Gaussian Acyclic Models with Latent Confounders." Artificial Intelligence and Statistics, 2020.

Markdown

[Maeda and Shimizu. "RCD: Repetitive Causal Discovery of Linear Non-Gaussian Acyclic Models with Latent Confounders." Artificial Intelligence and Statistics, 2020.](https://mlanthology.org/aistats/2020/maeda2020aistats-rcd/)

BibTeX

@inproceedings{maeda2020aistats-rcd,
  title     = {{RCD: Repetitive Causal Discovery of Linear Non-Gaussian Acyclic Models with Latent Confounders}},
  author    = {Maeda, Takashi Nicholas and Shimizu, Shohei},
  booktitle = {Artificial Intelligence and Statistics},
  year      = {2020},
  pages     = {735-745},
  volume    = {108},
  url       = {https://mlanthology.org/aistats/2020/maeda2020aistats-rcd/}
}