Differentiable Multi-Target Causal Bayesian Experimental Design

Abstract

We introduce a gradient-based approach for the problem of Bayesian optimal experimental design to learn causal models in a batch setting --- a critical component for causal discovery from finite data where interventions can be costly or risky. Existing methods rely on greedy approximations to construct a batch of experiments while using black-box methods to optimize over a single target-state pair to intervene with. In this work, we completely dispose of the black-box optimization techniques and greedy heuristics and instead propose a conceptually simple end-to-end gradient-based optimization procedure to acquire a set of optimal intervention target-state pairs. Such a procedure enables parameterization of the design space to efficiently optimize over a batch of multi-target-state interventions, a setting which has hitherto not been explored due to its complexity. We demonstrate that our proposed method outperforms baselines and existing acquisition strategies in both single-target and multi-target settings across a number of synthetic datasets.

Cite

Text

Tigas et al. "Differentiable Multi-Target Causal Bayesian Experimental Design." ICLR 2023 Workshops: MLDD, 2023.

Markdown

[Tigas et al. "Differentiable Multi-Target Causal Bayesian Experimental Design." ICLR 2023 Workshops: MLDD, 2023.](https://mlanthology.org/iclrw/2023/tigas2023iclrw-differentiable/)

BibTeX

@inproceedings{tigas2023iclrw-differentiable,
  title     = {{Differentiable Multi-Target Causal Bayesian Experimental Design}},
  author    = {Tigas, Panagiotis and Annadani, Yashas and Ivanova, Desi R. and Jesson, Andrew and Gal, Yarin and Foster, Adam and Bauer, Stefan},
  booktitle = {ICLR 2023 Workshops: MLDD},
  year      = {2023},
  url       = {https://mlanthology.org/iclrw/2023/tigas2023iclrw-differentiable/}
}