Relationship Between Controllability Scoring and Optimal Experimental Design
Abstract
Controllability scores provide control-theoretic centrality measures that quantify the relative importance of state nodes in networked dynamical systems. We establish a structural connection between finite-time controllability scoring and approximate optimal experimental design (OED): the finite-time controllability Gramian decomposes additively across nodes, yielding an affine matrix model of the same form as the information-matrix model in OED. This yields a direct correspondence between the volumetric controllability score (VCS) and D-optimality, and between the average energy controllability score (AECS) and A-optimality, implying that the classical D/A invariance gap has a direct analogue in controllability scoring. By contrast, we point out that controllability scoring generically admits a unique optimizer, unlike approximate-OED formulations. Finally, we uncover a long-horizon phenomenon with no OED counterpart: source-like state nodes without a negative self-loop can be increasingly downweighted by AECS as the horizon grows. Two numerical examples corroborate this long-horizon downweighting behavior.
Cite
@article{arxiv.2602.11921,
title = {Relationship Between Controllability Scoring and Optimal Experimental Design},
author = {Kazuhiro Sato},
journal= {arXiv preprint arXiv:2602.11921},
year = {2026}
}
Comments
Accepted to The 15th Asian Control Conference, 2026