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KDD’07 Jeffrey Davitz, Jiye Yu, Sugato Basu, David Gutelius, and Alexandra Harris Presenter : Bo-Ren Lu Date : 2008 / 12 / 02
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I Link Search And Routing In Social Networks

  • 1. KDD’07 Jeffrey Davitz, Jiye Yu, Sugato Basu, David Gutelius, and Alexandra Harris Presenter : Bo-Ren Lu Date : 2008 / 12 / 02
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