A Family of Centrality Measures for Graph Data Based on Subgraphs

Cristian Riveros, J. Salas
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引用次数: 6

Abstract

We present the theoretical foundations of a new approach in centrality measures for graph data. The main principle of our approach is very simple: the more relevant subgraphs around a vertex, the more central it is in the network. We formalize the notion of “relevant subgraphs” by choosing a family of subgraphs that, give a graph G and a vertex v in G, it assigns a subset of connected subgraphs of G that contains v. Any of such families defines a measure of centrality by counting the number of subgraphs assigned to the vertex, i.e., a vertex will be more important for the network if it belongs to more subgraphs in the family. We show many examples of this approach and, in particular, we propose the all-subgraphs centrality, a centrality measure that takes every subgraph into account. We study fundamental properties over families of subgraphs that guarantee desirable properties over the corresponding centrality measure. Interestingly, all-subgraphs centrality satisfies all these properties, showing its robustness as a notion for centrality. Finally, we study the computational complexity of counting certain families of subgraphs and show a polynomial time algorithm to compute the all-subgraphs centrality for graphs with bounded tree width. 2012 ACM Subject Classification Mathematics of computing→ Graph theory; Information systems → Graph-based database models
一组基于子图的图数据中心性测度
我们提出了一种新的图数据中心性度量方法的理论基础。我们方法的主要原理非常简单:一个顶点周围的相关子图越多,它在网络中的位置就越中心。我们通过选择一组子图来形式化“相关子图”的概念,给定一个图G和G中的一个顶点v,它分配一个包含v的G的连通子图的子集。任何这样的族通过计算分配给该顶点的子图的数量来定义一个中心性的度量,即,如果一个顶点属于该族中的更多子图,则该顶点对网络将更重要。我们展示了这种方法的许多例子,特别是,我们提出了全子图中心性,这是一种考虑到每个子图的中心性度量。我们研究了子图族的基本性质,这些性质保证了相应中心性测度上的理想性质。有趣的是,所有子图的中心性满足所有这些性质,显示了它作为中心性概念的鲁棒性。最后,我们研究了计算某些子图族的计算复杂度,并给出了计算有界树宽度图的所有子图中心性的多项式时间算法。2012 ACM学科分类计算数学→图论;信息系统→基于图的数据库模型
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