Community-level core-periphery structures in collaboration networks
Sara Geremia, Domenico De Stefano, Michael Fop

TL;DR
This paper presents a new framework for detecting core-periphery structures at the community level in collaboration networks, revealing hierarchical roles related to institutions, regions, and research topics.
Contribution
It introduces a novel method that assigns core or peripheral roles to communities based on inter-community connection density, enabling analysis of meso-scale structures.
Findings
Hierarchical core-periphery structures linked to institutions and regions
Method applied to Italian academic co-authorship network
Reveals social and organizational roles in network structure
Abstract
Uncovering structural patterns in collaboration networks is key for understanding how knowledge flows and innovation emerges. These networks often exhibit a rich interplay of meso-scale structures, such as communities, core-periphery organization, and influential hubs, which shape the complexity of scientific collaboration. The coexistence of such structures challenges traditional approaches, which typically isolate specific network patterns at the node level. We introduce a novel framework for detecting core-periphery structures at the community level. Given a reference grouping of the nodes, the method optimizes an objective function that assigns core or peripheral roles to communities by accounting for the density and strength of their inter-community connections. The node-level partition may correspond to either inferred communities or to a node-attribute classification, such as…
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Taxonomy
TopicsComplex Network Analysis Techniques · Innovation and Knowledge Management · University-Industry-Government Innovation Models
