English

An O(loglog n)-Approximation for Submodular Facility Location

Data Structures and Algorithms 2022-11-11 v1 Optimization and Control

Abstract

In the Submodular Facility Location problem (SFL) we are given a collection of nn clients and mm facilities in a metric space. A feasible solution consists of an assignment of each client to some facility. For each client, one has to pay the distance to the associated facility. Furthermore, for each facility ff to which we assign the subset of clients SfS^f, one has to pay the opening cost g(Sf)g(S^f), where g()g(\cdot) is a monotone submodular function with g()=0g(\emptyset)=0. SFL is APX-hard since it includes the classical (metric uncapacitated) Facility Location problem (with uniform facility costs) as a special case. Svitkina and Tardos [SODA'06] gave the current-best O(logn)O(\log n) approximation algorithm for SFL. The same authors pose the open problem whether SFL admits a constant approximation and provide such an approximation for a very restricted special case of the problem. We make some progress towards the solution of the above open problem by presenting an O(loglogn)O(\log\log n) approximation. Our approach is rather flexible and can be easily extended to generalizations and variants of SFL. In more detail, we achieve the same approximation factor for the practically relevant generalizations of SFL where the opening cost of each facility ff is of the form pf+g(Sf)p_f+g(S^f) or wfg(Sf)w_f\cdot g(S^f), where pf,wf0p_f,w_f \geq 0 are input values. We also obtain an improved approximation algorithm for the related Universal Stochastic Facility Location problem. In this problem one is given a classical (metric) facility location instance and has to a priori assign each client to some facility. Then a subset of active clients is sampled from some given distribution, and one has to pay (a posteriori) only the connection and opening costs induced by the active clients. The expected opening cost of each facility ff can be modelled with a submodular function of the set of clients assigned to ff.

Cite

@article{arxiv.2211.05474,
  title  = {An O(loglog n)-Approximation for Submodular Facility Location},
  author = {Fateme Abbasi and Marek Adamczyk and Miguel Bosch-Calvo and Jarosław Byrka and Fabrizio Grandoni and Krzysztof Sornat and Antoine Tinguely},
  journal= {arXiv preprint arXiv:2211.05474},
  year   = {2022}
}

Comments

24 pages, 1 algorithm, 1 figure

R2 v1 2026-06-28T05:35:19.622Z