Authors
Vincent A Traag, Rodrigo Aldecoa, J-C Delvenne
Publication date
2015/8
Journal
Physical review e
Volume
92
Issue
2
Pages
022816
Publisher
American Physical Society
Description
Nodes in real-world networks are repeatedly observed to form dense clusters, often referred to as communities. Methods to detect these groups of nodes usually maximize an objective function, which implicitly contains the definition of a community. We here analyze a recently proposed measure called surprise, which assesses the quality of the partition of a network into communities. In its current form, the formulation of surprise is rather difficult to analyze. We here therefore develop an accurate asymptotic approximation. This allows for the development of an efficient algorithm for optimizing surprise. Incidentally, this leads to a straightforward extension of surprise to weighted graphs. Additionally, the approximation makes it possible to analyze surprise more closely and compare it to other methods, especially modularity. We show that surprise is (nearly) unaffected by the well-known resolution limit, a particular …
Total citations
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Scholar articles
VA Traag, R Aldecoa, JC Delvenne - Physical review e, 2015