A regret minimization approach to fixed-point iterations
Abstract
We propose a conversion scheme that turns regret minimizing algorithms into fixed point iterations, with convergence guarantees following from regret bounds. The resulting iterations can be seen as a grand extension of the classical Krasnoselskii--Mann iterations, as the latter are recovered by converting the Online Gradient Descent algorithm. This approach yields new simple iterations for finding fixed points of non-self operators. We also focus on converting algorithms from the AdaGrad family of regret minimizers, and thus obtain fixed point iterations with adaptive guarantees of a new kind. Numerical experiments on various problems demonstrate faster convergence of AdaGrad-based fixed point iterations over Krasnoselskii--Mann iterations.
Cite
@article{arxiv.2509.21653,
title = {A regret minimization approach to fixed-point iterations},
author = {Joon Kwon},
journal= {arXiv preprint arXiv:2509.21653},
year = {2025}
}