SPQR-trees are a central component of graph drawing and are also important in many further areas of computer science. From their inception onwards, they have always had a strong relation to dynamic algorithms maintaining information, e.g., on planarity and triconnectivity, under edge insertion and, later on, also deletion. In this paper, we focus on a special kind of dynamic update, the expansion of vertices into arbitrary biconnected graphs, while maintaining the SPQR-tree and further information. This will also allow us to efficiently merge two SPQR-trees by identifying the edges incident to two vertices with each other. We do this working along an axiomatic definition lifting the SPQR-tree to a stand-alone data structure that can be modified independently from the graph it might have been derived from. Making changes to this structure, we can now observe how the graph represented by the SPQR-tree changes, instead of having to reason which updates to the SPQR-tree are necessary after a change to the represented graph. Using efficient expansions and merges allows us to improve the runtime of the Synchronized Planarity algorithm by Bl\"asius et al. [ESA 2021] from $O(m^2)$ to $O(m\cdot \Delta)$, where $\Delta$ is the maximum pipe degree. This also reduces the time for solving several constrained planarity problems, e.g. for Clustered Planarity from $O((n+d)^2)$ to $O(n+d\cdot \Delta)$, where $d$ is the total number of crossings between cluster borders and edges and $\Delta$ is the maximum number of edge crossings on a single cluster border.
翻译:SPQR 树是图形绘制的一个核心组成部分, 在计算机科学的许多领域也很重要。 从一开始, 它们就一直与动态算法保持信息( 例如, 平面和三连通性) 有着很强的关系, 处于边缘插入之下, 以后还会删除 。 在本文中, 我们侧重于一种特殊的动态更新, 将螺旋扩大为任意的双链接图形, 同时保持 SPQR 树和进一步的信息 。 这还将使我们能够通过辨别边缘事件到彼此之间的两个顶端。 我们这样做时, 沿着一个轴式定义, 将 SPQR 树提升为独立的数据结构。 对该结构进行修改后, 我们可以看到 SPQR- 树变化所代表的图表是如何需要的, 而不是在显示的图表之后需要更新 SPQR 。 高效扩展和合并, 使我们能够将 SPQR 平面 平面 的平流时间从 SEQQR+ 流到 美元 平面平面平面平面平面计划 。