Detecting network communities beyond assortativity-related attributes

@article{Liu2014DetectingNC,
  title={Detecting network communities beyond assortativity-related attributes},
  author={Xin Liu and Tsuyoshi Murata and Ken Wakita},
  journal={Physical review. E, Statistical, nonlinear, and soft matter physics},
  year={2014},
  volume={90 1},
  pages={
          012806
        }
}
  • Xin LiuT. MurataKen Wakita
  • Published 1 July 2014
  • Computer Science
  • Physical review. E, Statistical, nonlinear, and soft matter physics
In network science, assortativity refers to the tendency of links to exist between nodes with similar attributes. In social networks, for example, links tend to exist between individuals of similar age, nationality, location, race, income, educational level, religious belief, and language. Thus, various attributes jointly affect the network topology. An interesting problem is to detect community structure beyond some specific assortativity-related attributes ρ, i.e., to take out the effect of… 

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