Multitask LQG Control: Performance and Generalization Bounds
Abstract
We study multitask learning for stochastic and partially observed control systems, focusing on the linear quadratic Gaussian (LQG) problem. Our goal is to learn a common stabilizing controller that generalizes across a distribution of systems and objectives. To this end, we leverage a history-dependent lifting that recasts the multitask LQG problem into an equivalent high-dimensional multitask LQR problem, allowing for the analysis of policy gradient methods. We show that learning a common lifted controller induces a heterogeneity bias which we characterize via a "bisimulation function". We establish performance and generalization guarantees that explicitly depend on such bisimulation-based heterogeneity measures. For model-free, we demonstrate that multitask learning reduces policy gradient estimation variance proportionally to the number of tasks in the training set.
Keywords
Cite
@article{arxiv.2604.16730,
title = {Multitask LQG Control: Performance and Generalization Bounds},
author = {Leonardo F. Toso and Kasra Fallah and Charis Stamouli and George J. Pappas and James Anderson},
journal= {arXiv preprint arXiv:2604.16730},
year = {2026}
}