Inverse optimization problems with multiple weight functions
Abstract
We introduce a new class of inverse optimization problems in which an input solution is given together with linear weight functions, and the goal is to modify the weights by the same deviation vector so that the input solution becomes optimal with respect to each of them, while minimizing . In particular, we concentrate on three problems with multiple weight functions: the inverse shortest - path, the inverse bipartite perfect matching, and the inverse arborescence problems. Using LP duality, we give min-max characterizations for the -norm of an optimal deviation vector. Furthermore, we show that the optimal is not necessarily integral even when the weight functions are so, therefore computing an optimal solution is significantly more difficult than for the single-weighted case. We also give a necessary and sufficient condition for the existence of an optimal deviation vector that changes the values only on the elements of the input solution, thus giving a unified understanding of previous results on arborescences and matchings.
Cite
@article{arxiv.2201.03078,
title = {Inverse optimization problems with multiple weight functions},
author = {Kristóf Bérczi and Lydia Mirabel Mendoza-Cadena and Kitti Varga},
journal= {arXiv preprint arXiv:2201.03078},
year = {2022}
}
Comments
20 pages, 5 figures