Litcius/Paper detail

Center–periphery structure in research communities

Eleanor Wedell, Minhyuk Park, Dmitriy Korobskiy, Tandy Warnow, George Chacko

2022Quantitative Science Studies16 citationsDOIOpen Access PDF

Abstract

Abstract Clustering and community detection in networks are of broad interest and have been the subject of extensive research that spans several fields. We are interested in the relatively narrow question of detecting communities of scientific publications that are linked by citations. These publication communities can be used to identify scientists with shared interests who form communities of researchers. Building on the well-known k-core algorithm, we have developed a modular pipeline to find publication communities with center–periphery structure. Using a quantitative and qualitative approach, we evaluate community finding results on a citation network consisting of over 14 million publications relevant to the field of extracellular vesicles. We compare our approach to communities discovered by the widely used Leiden algorithm for community finding.

Topics & Concepts

Field (mathematics)Pipeline (software)Data scienceCitationSubject (documents)Cluster analysisCommunity structureCenter (category theory)Computer scienceGeographyLibrary scienceEcologyArtificial intelligenceBiologyMathematicsChemistryProgramming languagePure mathematicsCrystallographyComplex Network Analysis TechniquesBioinformatics and Genomic NetworksAdvanced Graph Neural Networks