使用空间填充曲线划分广域图

Cyprien Gottstein, Philippe Raipin Parvédy, M. Hurfin, Thomas Hassan, T. Coupaye
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引用次数: 0

摘要

图结构是一个非常强大的工具来建模系统和表示其实际形状。例如,为基础设施或社交网络建模自然会产生图形。然而,图之间可能非常不同,因为它们不共享相同的属性(大小、连接性、社区等),构建能够管理图的系统应该考虑到这种多样性。关于图形管理的一大挑战是设计一个提供可伸缩持久存储并允许高效浏览的系统。图划分研究的最新进展主要是为了研究社交图,通常考虑无标度图。由于我们对连接对象及其上下文的建模感兴趣,我们专注于划分几何图。因此,我们的策略有所不同,我们将几何作为主要的分区工具。事实上,我们依赖于逆空间填充分区,这是一种依赖于空间填充曲线来划分图的技术,以前应用于本质上由网格生成的图。此外,我们将逆空间填充划分扩展到一个新的目标,我们将其定义为广域图。我们提供了两种最先进的图分区流策略的扩展比较,即LDG和FENNEL。我们还提出了自定义指标,以便更好地理解和识别最适合ISP分区解决方案的用例。实验表明,在有利的环境下,边缘切割可以大大减少,从使用FENNEL的34%以上减少到使用ISP的不到1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Partitioning Wide Area Graphs Using a Space Filling Curve
Graph structure is a very powerful tool to model system and represent their actual shape. For instance, modelling an infrastructure or social network naturally leads to graph. Yet, graphs can be very different from one another as they do not share the same properties (size, connectivity, communities, etc.) and building a system able to manage graphs should take into account this diversity. A big challenge concerning graph management is to design a system providing a scalable persistent storage and allowing efficient browsing. Mainly to study social graphs, the most recent developments in graph partitioning research often consider scale-free graphs. As we are interested in modelling connected objects and their context, we focus on partitioning geometric graphs. Consequently our strategy differs, we consider geometry as our main partitioning tool. In fact, we rely on Inverse Space-filling Partitioning, a technique which relies on a space filling curve to partition a graph and was previously applied to graphs essentially generated from Meshes. Furthermore, we extend Inverse Space-Filling Partitioning toward a new target we define as Wide Area Graphs. We provide an extended comparison with two state-of-the-art graph partitioning streaming strategies, namely LDG and FENNEL. We also propose customized metrics to better understand and identify the use cases for which the ISP partitioning solution is best suited. Experimentations show that in favourable contexts, edge-cuts can be drastically reduced, going from more 34% using FENNEL to less than 1% using ISP.
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