Kernel-Based Differentiable Learning of Non-Parametric Directed Acyclic Graphical Models

Abstract

Causal discovery amounts to learning a directed acyclic graph (DAG) that encodes a causal model. This model selection problem can be challenging due to its large combinatorial search space, particularly when dealing with non-parametric causal models. Recent research has sought to bypass the combinatorial search by reformulating causal discovery as a continuous optimization problem, employing constraints that ensure the acyclicity of the graph. In non-parametric settings, existing approaches typically rely on finite-dimensional approximations of the relationships between nodes, resulting in a score-based continuous optimization problem with a smooth acyclicity constraint. In this work, we develop an alternative approximation method by utilizing reproducing kernel Hilbert spaces (RKHS) and applying general sparsity-inducing regularization terms based on partial derivatives. Within this framework, we introduce an extended RKHS representer theorem. To enforce acyclicity, we advocate the log-determinant formulation of the acyclicity constraint and show its stability. Finally, we assess the performance of our proposed RKHS-DAGMA procedure through simulations and illustrative data analyses.

Cite

Text

Liang et al. "Kernel-Based Differentiable Learning of Non-Parametric Directed Acyclic Graphical Models." Proceedings of The 12th International Conference on Probabilistic Graphical Models, 2024.

Markdown

[Liang et al. "Kernel-Based Differentiable Learning of Non-Parametric Directed Acyclic Graphical Models." Proceedings of The 12th International Conference on Probabilistic Graphical Models, 2024.](https://mlanthology.org/pgm/2024/liang2024pgm-kernelbased/)

BibTeX

@inproceedings{liang2024pgm-kernelbased,
  title     = {{Kernel-Based Differentiable Learning of Non-Parametric Directed Acyclic Graphical Models}},
  author    = {Liang, Yurou and Zadorozhnyi, Oleksandr and Drton, Mathias},
  booktitle = {Proceedings of The 12th International Conference on Probabilistic Graphical Models},
  year      = {2024},
  pages     = {253-272},
  volume    = {246},
  url       = {https://mlanthology.org/pgm/2024/liang2024pgm-kernelbased/}
}