Minimum Cuts in Surface Graphs
October 09, 2019 Β· Declared Dead Β· π SIAM journal on computing (Print)
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Authors
Erin W. Chambers, Jeff Erickson, Kyle Fox, Amir Nayyeri
arXiv ID
1910.04278
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CG
Citations
10
Venue
SIAM journal on computing (Print)
Last Checked
4 months ago
Abstract
We describe algorithms to efficiently compute minimum $(s,t)$-cuts and global minimum cuts of undirected surface-embedded graphs. Given an edge-weighted undirected graph $G$ with $n$ vertices embedded on an orientable surface of genus $g$, our algorithms can solve either problem in $g^{O(g)} n \log \log n$ or $2^{O(g)} n \log n$ time, whichever is better. When $g$ is a constant, our $g^{O(g)} n \log \log n$ time algorithms match the best running times known for computing minimum cuts in planar graphs. Our algorithms for minimum cuts rely on reductions to the problem of finding a minimum-weight subgraph in a given $\mathbb{Z}_2$-homology class, and we give efficient algorithms for this latter problem as well. If $G$ is embedded on a surface with $b$ boundary components, these algorithms run in $(g + b)^{O(g + b)} n \log \log n$ and $2^{O(g + b)} n \log n$ time. We also prove that finding a minimum-weight subgraph homologous to a single input cycle is NP-hard, showing it is likely impossible to improve upon the exponential dependencies on $g$ for this latter problem.
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