A deterministic near-linear time approximation scheme for geometric transportation
Emily Fox (1), Jiashuai Lu (1) ((1) The University of Texas at, Dallas)

TL;DR
This paper introduces a deterministic near-linear time approximation scheme for the geometric transportation problem, achieving near-optimal solutions efficiently and improving upon previous algorithms for related problems.
Contribution
It presents the first deterministic near-linear time $(1 + ext{epsilon})$-approximation algorithm for geometric transportation, generalizing bipartite matching and improving existing methods.
Findings
Runs in $O(n ext{epsilon}^{-(d+2)} ext{log}^5 n ext{log} ext{log} n)$ time.
First deterministic $(1 + ext{epsilon})$-approximation for geometric bipartite matching.
Extends to near-linear randomized algorithms for uncapacitated minimum cost flow.
Abstract
Given a set of points for some constant and a supply function such that , , and , the geometric transportation problem asks one to find a transportation map such that , , and the weighted sum of Euclidean distances for the pairs is minimized. We present the first deterministic algorithm that computes, in near-linear time, a transportation map whose cost is within a factor of optimal. More precisely, our algorithm runs in time for any constant…
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Taxonomy
TopicsFacility Location and Emergency Management
