English

Goal-Oriented Sequential Bayesian Experimental Design for Causal Learning

Machine Learning 2025-07-11 v1 Artificial Intelligence Methodology Machine Learning

Abstract

We present GO-CBED, a goal-oriented Bayesian framework for sequential causal experimental design. Unlike conventional approaches that select interventions aimed at inferring the full causal model, GO-CBED directly maximizes the expected information gain (EIG) on user-specified causal quantities of interest, enabling more targeted and efficient experimentation. The framework is both non-myopic, optimizing over entire intervention sequences, and goal-oriented, targeting only model aspects relevant to the causal query. To address the intractability of exact EIG computation, we introduce a variational lower bound estimator, optimized jointly through a transformer-based policy network and normalizing flow-based variational posteriors. The resulting policy enables real-time decision-making via an amortized network. We demonstrate that GO-CBED consistently outperforms existing baselines across various causal reasoning and discovery tasks-including synthetic structural causal models and semi-synthetic gene regulatory networks-particularly in settings with limited experimental budgets and complex causal mechanisms. Our results highlight the benefits of aligning experimental design objectives with specific research goals and of forward-looking sequential planning.

Keywords

Cite

@article{arxiv.2507.07359,
  title  = {Goal-Oriented Sequential Bayesian Experimental Design for Causal Learning},
  author = {Zheyu Zhang and Jiayuan Dong and Jie Liu and Xun Huan},
  journal= {arXiv preprint arXiv:2507.07359},
  year   = {2025}
}

Comments

10 pages, 6 figures