
TL;DR
This paper introduces a simple boosting framework for transshipment problems, showing that any approximate solver providing dual solutions can be boosted to near-optimality, simplifying previous methods across various computational settings.
Contribution
It proves that black-box approximate transshipment solvers with dual solutions can be boosted to near-optimal solutions, simplifying and unifying previous approaches.
Findings
Any black-box α-approximate solver with dual solutions can be boosted.
Simplified analysis using the multiplicative weights framework.
Unified approach applicable in sequential, parallel, and distributed settings.
Abstract
Transshipment, also known under the names of earth mover's distance, uncapacitated min-cost flow, or Wasserstein's metric, is an important and well-studied problem that asks to find a flow of minimum cost that routes a general demand vector. Adding to its importance, recent advancements in our understanding of algorithms for transshipment have led to breakthroughs for the fundamental problem of computing shortest paths. Specifically, the recent near-optimal -approximate single-source shortest path algorithms in the parallel and distributed settings crucially solve transshipment as a central step of their approach. The key property that differentiates transshipment from other similar problems like shortest path is the so-called \emph{boosting}: one can boost a (bad) approximate solution to a near-optimal -approximate solution. This conceptually…
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