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Information Horizons in Networks

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 Added by Ala Trusina
 Publication date 2004
  fields Physics
and research's language is English




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We investigate and quantify the interplay between topology and ability to send specific signals in complex networks. We find that in a majority of investigated real-world networks the ability to communicate is favored by the network topology on small distances, but disfavored at larger distances. We further discuss how the ability to locate specific nodes can be improved if information associated to the overall traffic in the network is available.



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We review three studies of information flow in social networks that help reveal their underlying social structure, how information spreads through them and why small world experiments work.
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