Efficient and adaptive parameterized algorithms on modular decompositions
April 26, 2018 Β· Declared Dead Β· π Embedded Systems and Applications
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Authors
Stefan Kratsch, Florian Nelles
arXiv ID
1804.10173
Category
cs.DS: Data Structures & Algorithms
Citations
18
Venue
Embedded Systems and Applications
Last Checked
3 months ago
Abstract
We study the influence of a graph parameter called modular-width on the time complexity for optimally solving well-known polynomial problems such as Maximum Matching, Triangle Counting, and Maximum $s$-$t$ Vertex-Capacitated Flow. The modular-width of a graph depends on its (unique) modular decomposition tree, and can be computed in linear time $O(n+m)$ for graphs with $n$ vertices and $m$ edges. Modular decompositions are an important tool for graph algorithms, e.g., for linear-time recognition of certain graph classes. Throughout, we obtain efficient parameterized algorithms of running times $O(f(mw)n+m)$, $O(n+f(mw)m)$ , or $O(f(mw)+n+m)$ for graphs of modular-width $mw$. Our algorithm for Maximum Matching, running in time $O(mw^2\log mw \cdot n+m)$, is both faster and simpler than the recent $O(mw^4n+m)$ time algorithm of Coudert et al. (SODA 2018). For several other problems, e.g., Triangle Counting and Maximum $b$-Matching, we give adaptive algorithms, meaning that their running times match the best unparameterized algorithms for worst-case modular-width of $mw=Ξ(n)$ and they outperform them already for $mw=o(n)$, until reaching linear time for $mw=O(1)$.
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