Fearghal O'Donncha, Malvern Madondo, et al.
AGU Fall 2022
The paper is about developing a solver for maximizing a real-valued function of binary variables.
The solver relies on an algorithm that estimates the optimal objective-function value of instances from the underlying distribution of objectives and their respective sub-instances. The training of the estimator is based on an inequality that facilitates the use of the expected total deviation from optimality conditions as a loss function rather than the objective-function itself. Thus, it does not calculate values of policies, nor does it rely on solved instances.
Fearghal O'Donncha, Malvern Madondo, et al.
AGU Fall 2022
Paulo Rodrigo Cavalin, Pedro Henrique Leite Da Silva Pires Domingues, et al.
ACL 2023
Wang Zhou, Levente Klein, et al.
INFORMS 2020
Hiroki Yanagisawa, Kohei Miyaguchi, et al.
NeurIPS 2022