English

Optimization via a Control-Centric Framework

Optimization and Control 2026-03-23 v6 Systems and Control Systems and Control

Abstract

Optimization plays a central role in intelligent systems and cyber-physical technologies, where speed and reliability of convergence directly impact performance. In control theory, optimization-centric methods are standard: controllers are designed by repeatedly solving optimization problems, as in linear quadratic regulation, HH_\infty control, and model predictive control. In contrast, this paper develops a control-centric framework for optimization itself, where algorithms are constructed directly from Lyapunov stability principles rather than being proposed first and analyzed afterward. A key element is the stationarity vector, which encodes first-order optimality conditions and enables Lyapunov-based convergence analysis. By pairing a Lyapunov function with a selectable decay law, we obtain continuous-time dynamics with guaranteed exponential, finite-time, fixed-time, or prescribed-time convergence. Within this framework, we introduce three feedback realizations of increasing restrictiveness: the Hessian-gradient, Newton, and gradient dynamics. Each realization shapes the decay of the stationarity vector to achieve the desired rate. These constructions unify unconstrained optimization, extend naturally to constrained problems via Lyapunov-consistent primal-dual dynamics, and broaden the results for minimax and generalized Nash equilibrium seeking problems beyond exponential stability. The framework provides systematic design tools for optimization algorithms in control and game-theoretic problems.

Keywords

Cite

@article{arxiv.2510.05455,
  title  = {Optimization via a Control-Centric Framework},
  author = {Liraz Mudrik and Isaac Kaminer and Sean Kragelund and Abram H. Clark},
  journal= {arXiv preprint arXiv:2510.05455},
  year   = {2026}
}

Comments

This work has been submitted to the IEEE for possible publication. 12 pages, 3 figures