Future-Aware Safe Active Learning of Time Varying Systems Using Gaussian Processes
Abstract
Experimental exploration of high-cost systems with safety constraints, common in engineering applications, is a challenging endeavor. Data-driven models offer a promising solution, but acquiring the requisite data remains expensive and is potentially unsafe. Safe active learning techniques prove essential, enabling the learning of high-quality models with minimal expensive data points and high safety. This paper introduces a safe active learning framework tailored for time-varying systems, addressing drift, seasonal changes, and complexities due to dynamic behavior. The proposed Time-aware Integrated Mean Squared Prediction Error (T-IMSPE) method minimizes posterior variance over current and future states, optimizing information gathering also in the time domain. Empirical results highlight T-IMSPE's advantages in model quality through synthetic and real-world examples. State of the art Gaussian processes are compatible with T-IMSPE. Our theoretical contributions include a clear delineation which Gaussian process kernels, domains, and weighting measures are suitable for T-IMSPE and even beyond for its non-time aware predecessor IMSPE.
Cite
Text
Lange-Hegermann and Zimmer. "Future-Aware Safe Active Learning of Time Varying Systems Using Gaussian Processes." Transactions on Machine Learning Research, 2025.Markdown
[Lange-Hegermann and Zimmer. "Future-Aware Safe Active Learning of Time Varying Systems Using Gaussian Processes." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/langehegermann2025tmlr-futureaware/)BibTeX
@article{langehegermann2025tmlr-futureaware,
title = {{Future-Aware Safe Active Learning of Time Varying Systems Using Gaussian Processes}},
author = {Lange-Hegermann, Markus and Zimmer, Christoph},
journal = {Transactions on Machine Learning Research},
year = {2025},
url = {https://mlanthology.org/tmlr/2025/langehegermann2025tmlr-futureaware/}
}