Identifying vital nodes in networks exhibiting a community structure is a fundamental issue. Indeed, community structure is one of the main properties of real-world networks. Recent works have shown that community-aware centrality measures compare favorably with classical measures agnostic about this ubiquitous property. Nonetheless, there is no clear consensus about how they relate and in which situation it is better to use a classical or a community-aware centrality measure. To this end, in this paper, we perform an extensive investigation to get a better understanding of the relationship between classical and community-aware centrality measures reported in the literature. Experiments use artificial networks with controlled community structure properties and a large sample of real-world networks originating from various domains. Results indicate that the stronger the community structure, the more appropriate the community-aware centrality measures. Furthermore, variations of the degree and community size distribution parameters do not affect the results. Finally, network transitivity and community structure strength are the most significant drivers controlling the interactions between classical and community-aware centrality measures.
翻译:在展示社区结构的网络中确定关键节点是一个根本问题。事实上,社区结构是实际世界网络的主要特性之一。最近的工作表明,社区意识中心度措施优于对无处不在的财产的典型的不可知度措施。然而,对于它们之间的关系以及使用传统或社区意识中心度衡量标准在何种情况下更好,还没有明确的共识。为此,我们开展了广泛的调查,以更好地了解文献中报道的古典和社区意识中心度措施之间的关系。实验利用了带有受控社区结构特性的人工网络以及大量来自不同领域的实体世界网络样本。结果显示,社区结构越强,社区意识中心度衡量标准就越合适。此外,程度和社区规模分配参数的变化并不影响结果。最后,网络过渡性和社区结构的力量是控制传统和社区意识中心度措施之间相互作用的最重要驱动因素。