Improved Approximation Guarantees for Lower-Bounded Facility Location
Sara Ahmadian, Chaitanya Swamy

TL;DR
This paper presents a new approximation algorithm for the lower-bounded facility location problem, significantly improving the approximation ratio from 448 to 82.6, with novel algorithmic ideas and analysis.
Contribution
The paper introduces a substantially improved approximation algorithm for lower-bounded facility location, reducing the approximation ratio from 448 to 82.6 and providing new insights into the problem.
Findings
Achieved an approximation ratio of 82.6 for extsc{LBFL}
Developed new algorithmic ideas and analysis techniques
Provided deeper understanding of load-balanced facility location
Abstract
We consider the {\em lower-bounded facility location} (\lbfl) problem (also sometimes called {\em load-balanced facility location}), which is a generalization of {\em uncapacitated facility location} (\ufl), where each open facility is required to serve a certain {\em minimum} amount of demand. More formally, an instance of \lbfl is specified by a set of facilities with facility-opening costs , a set of clients, and connection costs specifying the cost of assigning a client to a facility , where the s form a metric. A feasible solution specifies a subset of facilities to open, and assigns each client to an open facility so that each open facility serves {\em at least clients}, where is an input parameter. The cost of such a solution is , and the goal is to find a feasible…
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Taxonomy
TopicsFacility Location and Emergency Management · Optimization and Search Problems · Vehicle Routing Optimization Methods
