小世界图与结构的压缩与对称

Ioannis Kontoyiannis, Yi Heng Lim, Katia Papakonstantinopoulou, Wojtek Szpankowski
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引用次数: 3

摘要

出于各种目的,特别是在数据压缩的上下文中,可以在三个层次上检查图。其结构可以描述为图的未标记版本;然后对其结构进行标注;最后,给定标签的结构和标签,就可以描述标签的内容。确定每一层的信息量并量化它们之间的依赖程度,需要研究对称性、图自同构、熵和图可压缩性。本文主要研究一类小世界图。这些是几何随机图,其中顶点首先连接到圆上最近的邻居,然后根据距离相关概率分布连接非邻居。我们建立了该模型的度分布,并用它来证明模型在适当的参数范围内的不对称性。然后结合图压缩导出了这些随机图的相关熵和结构熵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compression and Symmetry of Small-World Graphs and Structures
For various purposes and, in particular, in the context of data compression, a graph can be examined at three levels. Its structure can be described as the unlabeled version of the graph; then the labeling of its structure can be added; and finally, given then structure and labeling, the contents of the labels can be described. Determining the amount of information present at each level and quantifying the degree of dependence between them, requires the study of symmetry, graph automorphism, entropy, and graph compressibility. In this paper, we focus on a class of small-world graphs. These are geometric random graphs where vertices are first connected to their nearest neighbors on a circle and then pairs of non-neighbors are connected according to a distance-dependent probability distribution. We establish the degree distribution of this model, and use it to prove the model's asymmetry in an appropriate range of parameters. Then we derive the relevant entropy and structural entropy of these random graphs, in connection with graph compression.
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