Optimal diameter computation within bounded clique-width graphs
November 17, 2020 Β· Declared Dead Β· π arXiv.org
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Authors
Guillaume Ducoffe
arXiv ID
2011.08448
Category
cs.DS: Data Structures & Algorithms
Citations
7
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Coudert et al. (SODA'18) proved that under the Strong Exponential-Time Hypothesis, for any $Ξ΅>0$, there is no ${\cal O}(2^{o(k)}n^{2-Ξ΅})$-time algorithm for computing the diameter within the $n$-vertex cubic graphs of clique-width at most $k$. We present an algorithm which given an $n$-vertex $m$-edge graph $G$ and a $k$-expression, computes all the eccentricities in ${\cal O}(2^{{\cal O}(k)}(n+m)^{1+o(1)})$ time, thus matching their conditional lower bound. It can be modified in order to compute the Wiener index and the median set of $G$ within the same amount of time. On our way, we get a distance-labeling scheme for $n$-vertex $m$-edge graphs of clique-width at most $k$, using ${\cal O}(k\log^2{n})$ bits per vertex and constructible in ${\cal O}(k(n+m)\log{n})$ time from a given $k$-expression. Doing so, we match the label size obtained by Courcelle and Vanicat (DAM 2016), while we considerably improve the dependency on $k$ in their scheme. As a corollary, we get an ${\cal O}(kn^2\log{n})$-time algorithm for computing All-Pairs Shortest-Paths on $n$-vertex graphs of clique-width at most $k$. This partially answers an open question of Kratsch and Nelles (STACS'20).
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