Link communities reveal multiscale complexity in networks
Yong-Yeol Ahn, James P. Bagrow, Sune Lehmann

TL;DR
This paper introduces a novel approach to network community detection by focusing on link communities, which effectively captures both overlapping and hierarchical structures in complex networks across biological and social systems.
Contribution
The paper proposes a link community framework that unifies the concepts of overlap and hierarchy in network communities, addressing limitations of node-based methods.
Findings
Link communities reveal multiscale hierarchical structures.
Overlapping communities are naturally incorporated.
Application to biological and social networks demonstrates effectiveness.
Abstract
Networks have become a key approach to understanding systems of interacting objects, unifying the study of diverse phenomena including biological organisms and human society. One crucial step when studying the structure and dynamics of networks is to identify communities: groups of related nodes that correspond to functional subunits such as protein complexes or social spheres. Communities in networks often overlap such that nodes simultaneously belong to several groups. Meanwhile, many networks are known to possess hierarchical organization, where communities are recursively grouped into a hierarchical structure. However, the fact that many real networks have communities with pervasive overlap, where each and every node belongs to more than one group, has the consequence that a global hierarchy of nodes cannot capture the relationships between overlapping groups. Here we reinvent…
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Taxonomy
TopicsComplex Network Analysis Techniques · Bioinformatics and Genomic Networks · Gene Regulatory Network Analysis
