Many networks can be characterised by the presence of communities, which are groups of units that are closely linked and can be relevant in understanding the system's overall function. Recently, hypergraphs have emerged as a fundamental tool for modelling systems where interactions are not limited to pairs but may involve an arbitrary number of nodes. Using a dual approach to community detection, in this study we extend the concept of link communities to hypergraphs, allowing us to extract informative clusters of highly related hyperedges. We analyze the dendrograms obtained by applying hierarchical clustering to distance matrices among hyperedges on a variety of real-world data, showing that hyperlink communities naturally highlight the hierarchical and multiscale structure of higher-order networks. Moreover, by using hyperlink communities, we are able to extract overlapping memberships from nodes, overcoming limitations of traditional hard clustering methods. Finally, we introduce higher-order network cartography as a practical tool for categorizing nodes into different structural roles based on their interaction patterns and community participation. This approach helps identify different types of individuals in a variety of real-world social systems. Our work contributes to a better understanding of the structural organization of real-world higher-order systems.
翻译:许多网络的特征是社区的存在,这些社区是由密切关联的单位组成的群体,在理解系统的整体功能方面具有相关性。最近,高分仪已成为建模系统的基本工具,在这些系统中,互动并不局限于对口,而且可能涉及任意的节点。在社区探测中,我们采用双重方法,在这项研究中,我们扩大了社区与高分仪的联系概念,使我们得以提取高度相关高端的信息集群。我们分析了通过对各种现实世界数据的超端之间的距离矩阵进行分级集群组合而获得的曲率数据,表明超链接社区自然突出高端网络的分级和多级结构。此外,通过使用超链接社区,我们能够从结点中提取重叠的成员,克服传统的硬质组合方法的局限性。最后,我们引入了更高级的网络制图,作为根据互动模式和社区参与将节点分为不同结构角色的实用工具。这一方法有助于在现实世界各种社会系统中识别不同类型的个人。我们的工作有助于更好地了解现实世界更高端系统的结构组织。</s>