An approximation algorithm for multi-allocation hub location problems

The multi allocation p-hub median problem (MApHM), the multi allocation uncapacitated hub location problem (MAuHLP) and the multi allocation p-hub location problem (MApHLP) are common hub location problems with several practical applications. HLPs combine the task of constructing a network and solvi...

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Vydáno v:Computers & operations research Ročník 182; s. 107118
Hlavní autor: Jost, Niklas
Médium: Journal Article
Jazyk:angličtina
Vydáno: Elsevier Ltd 01.10.2025
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ISSN:0305-0548
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Shrnutí:The multi allocation p-hub median problem (MApHM), the multi allocation uncapacitated hub location problem (MAuHLP) and the multi allocation p-hub location problem (MApHLP) are common hub location problems with several practical applications. HLPs combine the task of constructing a network and solving a routing on that network. Specifically, a set of hubs must be chosen and each routing must be performed using one or two hubs as stopovers. The costs between two hubs are discounted by a parameter α. The objective is to minimize the total transportation cost in the MApHM and additionally to minimize the set-up costs for the hubs in the MAuHLP and MApHLP. In this paper, an approximation algorithm to solve these problems is developed, which improves the approximation bound for MAuHLP to 2.408. The proposed algorithm reduces the HLPs to Facility Location Problems (FLPs), incorporating the idea of preferring hubs in the direction of the destination. Depending on the HLP, different FLP approximation algorithms with approximation bound γ are used. In cases where the discount factor satisfies 0<α<1γ or α≥0.619, the resulting approximation bound still improves upon the current state of the art. The proposed algorithm is capable of solving much bigger instances than any exact algorithm in the literature. New benchmark instances have been created and published, such that HLP algorithms can be tested and compared on standardized huge instances. There, the proposed algorithm outperformed the previous best approximation algorithm in nearly all test instances. [Display omitted]
ISSN:0305-0548
DOI:10.1016/j.cor.2025.107118