Arthur Rudy
Department of Computer Science, University of Exeter, Exeter, United Kingdom.
PLoS One. 2025 Jan 22;20(1):e0317670. doi: 10.1371/journal.pone.0317670. eCollection 2025.
Community, core-periphery, disassortative and other node partitions allow us to understand the organisation and function of large networks. In this work we study common meso-scale structures using the idea of block modularity. We find that the configuration model imposes strong restrictions on core-periphery and related structures in directed and undirected networks. We derive inequalities expressing when such structures can be detected under the configuration model which are closely related to the resolution limit. Nestedness is closely related to core-periphery and is similarly restricted to only be detectable under certain conditions. We then derive a general equivalence between optimising block modularity and maximum likelihood estimation of the parameters of the degree corrected Stochastic Block Model. This allows us to contrast the two approaches, how they formalise the structure detection problem and understand these constraints in inferential versus descriptive approaches to meso-scale structure detection.
社区、核心-边缘、异质混合及其他节点划分有助于我们理解大型网络的组织和功能。在这项工作中,我们运用模块度思想研究常见的中尺度结构。我们发现,配置模型对有向和无向网络中的核心-边缘及相关结构施加了严格限制。我们推导了在配置模型下能够检测到此类结构的不等式,这些不等式与分辨率极限密切相关。嵌套性与核心-边缘密切相关,同样也被限制在特定条件下才能被检测到。然后,我们推导了优化模块度与度校正随机块模型参数的最大似然估计之间的一般等价关系。这使我们能够对比这两种方法,了解它们如何将结构检测问题形式化,并理解在中尺度结构检测的推理方法与描述方法中这些约束条件。