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Autori principali: Abbasi, Fateme, Böhm, Martin, Byrka, Jarosław, Mohammadi, Matin, Shin, Yongho
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2602.19680
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author Abbasi, Fateme
Böhm, Martin
Byrka, Jarosław
Mohammadi, Matin
Shin, Yongho
author_facet Abbasi, Fateme
Böhm, Martin
Byrka, Jarosław
Mohammadi, Matin
Shin, Yongho
contents We study Facility Location with Matching, a Facility Location problem where, given additional information about which pair of clients is compatible to be matched, we need to match as many clients as possible and assign each matched client pair to a same open facility at minimum total cost. The problem is motivated by match-making services relevant in, for example, video games or social apps. It naturally generalizes two prominent combinatorial optimization problems -- Uncapacitated Facility Location and Minimum-cost Maximum Matching. Facility Location with Matching also generalizes the Even-constrained Facility Location problem studied by Kim, Shin, and An (Algorithmica 2023). We propose a linear programming (LP) relaxation for this problem, and present a 3.868-approximation algorithm. Our algorithm leverages the work on bifactor-approximation algorithms (Byrka and Aardal, SICOMP 2012); our main technical contribution is a rerouting subroutine that reroutes a fractional solution to be supported on a fixed maximum matching with only small additional cost. For a special case where all clients are matched, we provide a refined algorithm achieving an approximation ratio of 2.218. As our algorithms are based on rounding an optimal solution to the LP relaxation, these approximation results also give the same upper bounds on the integrality gap of the relaxation.
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Servicing Matched Client Pairs with Facilities
Abbasi, Fateme
Böhm, Martin
Byrka, Jarosław
Mohammadi, Matin
Shin, Yongho
Data Structures and Algorithms
We study Facility Location with Matching, a Facility Location problem where, given additional information about which pair of clients is compatible to be matched, we need to match as many clients as possible and assign each matched client pair to a same open facility at minimum total cost. The problem is motivated by match-making services relevant in, for example, video games or social apps. It naturally generalizes two prominent combinatorial optimization problems -- Uncapacitated Facility Location and Minimum-cost Maximum Matching. Facility Location with Matching also generalizes the Even-constrained Facility Location problem studied by Kim, Shin, and An (Algorithmica 2023). We propose a linear programming (LP) relaxation for this problem, and present a 3.868-approximation algorithm. Our algorithm leverages the work on bifactor-approximation algorithms (Byrka and Aardal, SICOMP 2012); our main technical contribution is a rerouting subroutine that reroutes a fractional solution to be supported on a fixed maximum matching with only small additional cost. For a special case where all clients are matched, we provide a refined algorithm achieving an approximation ratio of 2.218. As our algorithms are based on rounding an optimal solution to the LP relaxation, these approximation results also give the same upper bounds on the integrality gap of the relaxation.
title Servicing Matched Client Pairs with Facilities
topic Data Structures and Algorithms
url https://arxiv.org/abs/2602.19680