Beyond Level Planarity
October 28, 2015 Β· Declared Dead Β· π International Symposium Graph Drawing and Network Visualization
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Authors
Patrizio Angelini, Giordano Da Lozzo, Giuseppe Di Battista, Fabrizio Frati, Maurizio Patrignani, Ignaz Rutter
arXiv ID
1510.08274
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CG
Citations
15
Venue
International Symposium Graph Drawing and Network Visualization
Last Checked
3 months ago
Abstract
In this paper we settle the computational complexity of two open problems related to the extension of the notion of level planarity to surfaces different from the plane. Namely, we show that the problems of testing the existence of a level embedding of a level graph on the surface of the rolling cylinder or on the surface of the torus, respectively known by the name of $\textit{Cyclic Level Planarity}$ and $\textit{Torus Level Planarity}$, are polynomial-time solvable. Moreover, we show a complexity dichotomy for testing the $\textit{Simultaneous Level Planarity}$ of a set of level graphs, with respect to both the number of level graphs and the number of levels.
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