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Britto, 2021 - Google Patents

Community detection in graphs

Britto, 2021

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Document ID
1312793760458378702
Author
Britto F
Publication year

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The Stochastic Block Model (SBM), is one of the most famous models of graphs with community structure, due to its facility in simulating several different structures. In this work, an introduction to community detection in the SBM model is made, to different approaches to …
Continue reading at www.teses.usp.br (PDF) (other versions)

Classifications

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