On the Area Requirements of Planar Greedy Drawings of Triconnected Planar Graphs
March 01, 2020 Β· Declared Dead Β· π International Computing and Combinatorics Conference
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Authors
Giordano Da Lozzo, Anthony D'Angelo, Fabrizio Frati
arXiv ID
2003.00556
Category
cs.CG: Computational Geometry
Cross-listed
cs.DM,
cs.DS,
math.CO
Citations
1
Venue
International Computing and Combinatorics Conference
Last Checked
3 months ago
Abstract
In this paper we study the area requirements of planar greedy drawings of triconnected planar graphs. Cao, Strelzoff, and Sun exhibited a family $\cal H$ of subdivisions of triconnected plane graphs and claimed that every planar greedy drawing of the graphs in $\mathcal H$ respecting the prescribed plane embedding requires exponential area. However, we show that every $n$-vertex graph in $\cal H$ actually has a planar greedy drawing respecting the prescribed plane embedding on an $O(n)\times O(n)$ grid. This reopens the question whether triconnected planar graphs admit planar greedy drawings on a polynomial-size grid. Further, we provide evidence for a positive answer to the above question by proving that every $n$-vertex Halin graph admits a planar greedy drawing on an $O(n)\times O(n)$ grid. Both such results are obtained by actually constructing drawings that are convex and angle-monotone. Finally, we consider $Ξ±$-Schnyder drawings, which are angle-monotone and hence greedy if $Ξ±\leq 30^\circ$, and show that there exist planar triangulations for which every $Ξ±$-Schnyder drawing with a fixed $Ξ±<60^\circ$ requires exponential area for any resolution rule.
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