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Close relationships: A study of mobile communication records

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 Added by Vasyl Palchykov
 Publication date 2012
  fields Physics
and research's language is English




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Mobile phone communication as digital service generates ever-increasing datasets of human communication actions, which in turn allow us to investigate the structure and evolution of social interactions and their networks. These datasets can be used to study the structuring of such egocentric networks with respect to the strength of the relationships by assuming direct dependence of the communication intensity on the strength of the social tie. Recently we have discovered that there are significant differences between the first and further best friends from the point of view of age and gender preferences. Here we introduce a control parameter $p_{rm max}$ based on the statistics of communication with the first and second best friend and use it to filter the data. We find that when $p_{rm max}$ is decreased the identification of the best friend becomes less ambiguous and the earlier observed effects get stronger, thus corroborating them.



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