English

Efficient Controller Learning from Human Preferences and Numerical Data Via Multi-Modal Surrogate Models

Machine Learning 2026-03-26 v1 Systems and Control Systems and Control

Abstract

Tuning control policies manually to meet high-level objectives is often time-consuming. Bayesian optimization provides a data-efficient framework for automating this process using numerical evaluations of an objective function. However, many systems, particularly those involving humans, require optimization based on subjective criteria. Preferential Bayesian optimization addresses this by learning from pairwise comparisons instead of quantitative measurements, but relying solely on preference data can be inefficient. We propose a multi-fidelity, multi-modal Bayesian optimization framework that integrates low-fidelity numerical data with high-fidelity human preferences. Our approach employs Gaussian process surrogate models with both hierarchical, autoregressive and non-hierarchical, coregionalization-based structures, enabling efficient learning from mixed-modality data. We illustrate the framework by tuning an autonomous vehicle's trajectory planner, showing that combining numerical and preference data significantly reduces the need for experiments involving the human decision maker while effectively adapting driving style to individual preferences.

Keywords

Cite

@article{arxiv.2603.24138,
  title  = {Efficient Controller Learning from Human Preferences and Numerical Data Via Multi-Modal Surrogate Models},
  author = {Lukas Theiner and Maik Pfefferkorn and Yongpeng Zhao and Sebastian Hirt and Rolf Findeisen},
  journal= {arXiv preprint arXiv:2603.24138},
  year   = {2026}
}

Comments

8 pages, 4 figures, accepted for ECC 2026

R2 v1 2026-07-01T11:37:03.656Z