An O(loglog n)-Approximation for Submodular Facility Location
Fateme Abbasi, Marek Adamczyk, Miguel Bosch-Calvo, Jaros{\l}aw Byrka,, Fabrizio Grandoni, Krzysztof Sornat, Antoine Tinguely

TL;DR
This paper presents an $O( ext{loglog } n)$ approximation algorithm for the Submodular Facility Location problem, improving previous bounds and extending to related variants and stochastic models.
Contribution
It introduces an $O( ext{loglog } n)$ approximation for SFL, advancing towards constant approximation and applicable to generalizations with submodular costs.
Findings
Achieved $O( ext{loglog } n)$ approximation for SFL.
Extended the approach to variants with additive or multiplicative facility costs.
Provided improved approximation for the Universal Stochastic Facility Location problem.
Abstract
In the Submodular Facility Location problem (SFL) we are given a collection of clients and 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 to which we assign the subset of clients , one has to pay the opening cost , where is a monotone submodular function with . 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 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…
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