A Faster Combinatorial Algorithm for Maximum Bipartite Matching
December 19, 2023 Β· Declared Dead Β· π arXiv.org
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Authors
Julia Chuzhoy, Sanjeev Khanna
arXiv ID
2312.12584
Category
cs.DS: Data Structures & Algorithms
Citations
9
Venue
arXiv.org
Last Checked
4 months ago
Abstract
The maximum bipartite matching problem is among the most fundamental and well-studied problems in combinatorial optimization. A beautiful and celebrated combinatorial algorithm of Hopcroft and Karp (1973) shows that maximum bipartite matching can be solved in $O(m \sqrt{n})$ time on a graph with $n$ vertices and $m$ edges. For the case of very dense graphs, a fast matrix multiplication based approach gives a running time of $O(n^{2.371})$. These results represented the fastest known algorithms for the problem until 2013, when Madry introduced a new approach based on continuous techniques achieving much faster runtime in sparse graphs. This line of research has culminated in a spectacular recent breakthrough due to Chen et al. (2022) that gives an $m^{1+o(1)}$ time algorithm for maximum bipartite matching (and more generally, for min cost flows). This raises a natural question: are continuous techniques essential to obtaining fast algorithms for the bipartite matching problem? Our work makes progress on this question by presenting a new, purely combinatorial algorithm for bipartite matching, that runs in $\tilde{O}(m^{1/3}n^{5/3})$ time, and hence outperforms both Hopcroft-Karp and the fast matrix multiplication based algorithms on moderately dense graphs. Using a standard reduction, we also obtain an $\tilde{O}(m^{1/3}n^{5/3})$ time deterministic algorithm for maximum vertex-capacitated $s$-$t$ flow in directed graphs when all vertex capacities are identical.
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