Multiplicative Auction Algorithm for Approximate Maximum Weight Bipartite Matching
January 22, 2023 Β· Declared Dead Β· π Mathematical programming
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Authors
Da Wei Zheng, Monika Henzinger
arXiv ID
2301.09217
Category
cs.DS: Data Structures & Algorithms
Citations
8
Venue
Mathematical programming
Last Checked
4 months ago
Abstract
$\newcommand{\eps}{\varepsilon}$We present an auction algorithm using multiplicative instead of constant weight updates to compute a $(1-\eps)$-approximate maximum weight matching (MWM) in a bipartite graph with $n$ vertices and $m$ edges in time $O(m\eps^{-1})$, beating the running time of the fastest known approximation algorithm of Duan and Pettie [JACM '14] that runs in $O(m\eps^{-1}\log \eps^{-1})$. Our algorithm is very simple and it can be extended to give a dynamic data structure that maintains a $(1-\eps)$-approximate maximum weight matching under (1) one-sided vertex deletions (with incident edges) and (2) one-sided vertex insertions (with incident edges sorted by weight) to the other side. The total time used is $O(m\eps^{-1})$, where $m$ is the sum of the number of initially existing and inserted edges.
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