articleApr 26, 2010Closed access

Predicting positive and negative links in online social networks

Stanford University · Cornell University

Indexed incrossref

Abstract

We study online social networks in which relationships can be either positive (indicating relations such as friendship) or negative (indicating relations such as opposition or antagonism). Such a mix of positive and negative links arise in a variety of online settings; we study datasets from Epinions, Slashdot and Wikipedia. We find that the signs of links in the underlying social networks can be predicted with high accuracy, using models that generalize across this diverse range of sites. These models provide insight into some of the fundamental principles that drive the formation of signed links in networks, shedding light on theories of balance and status from social psychology; they also suggest social…

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1,478
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FWCI
74.85
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100%
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30
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Authors

3

Topics & keywords

Keywords
  • Friendship
  • Opposition (politics)
  • Social network (sociolinguistics)
  • Computer science
  • Social relationship
  • Variety (cybernetics)
  • Social psychology
  • Social relation
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