English

Multi-Objective Multi-Fidelity Bayesian Optimization with Causal Priors

Machine Learning 2026-02-03 v1 Artificial Intelligence

Abstract

Multi-fidelity Bayesian optimization (MFBO) accelerates the search for the global optimum of black-box functions by integrating inexpensive, low-fidelity approximations. The central task of an MFBO policy is to balance the cost-efficiency of low-fidelity proxies against their reduced accuracy to ensure effective progression toward the high-fidelity optimum. Existing MFBO methods primarily capture associational dependencies between inputs, fidelities, and objectives, rather than causal mechanisms, and can perform poorly when lower-fidelity proxies are poorly aligned with the target fidelity. We propose RESCUE (REducing Sampling cost with Causal Understanding and Estimation), a multi-objective MFBO method that incorporates causal calculus to systematically address this challenge. RESCUE learns a structural causal model capturing causal relationships between inputs, fidelities, and objectives, and uses it to construct a probabilistic multi-fidelity (MF) surrogate that encodes intervention effects. Exploiting the causal structure, we introduce a causal hypervolume knowledge-gradient acquisition strategy to select input-fidelity pairs that balance expected multi-objective improvement and cost. We show that RESCUE improves sample efficiency over state-of-the-art MF optimization methods on synthetic and real-world problems in robotics, machine learning (AutoML), and healthcare.

Keywords

Cite

@article{arxiv.2602.00788,
  title  = {Multi-Objective Multi-Fidelity Bayesian Optimization with Causal Priors},
  author = {Md Abir Hossen and Mohammad Ali Javidian and Vignesh Narayanan and Jason M. O'Kane and Pooyan Jamshidi},
  journal= {arXiv preprint arXiv:2602.00788},
  year   = {2026}
}
R2 v1 2026-07-01T09:29:33.125Z