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calculate the node's BR according to the principle of PageRank.The model avoids the
defects caused by using of single factor to evaluate node's influence. Experiments
show that node's IR has no direct relationship with fans and numbers of micro blog.
Theory analysis and example of real network experiment show that the new proposed
method can effectively evaluate the node influence of the online social network.
Acknowledgment. This work has been supported by the National Natural Science
Foundation of China under Grant No.61070162 and No.60903159; the National
Science Technology support Project of China under Grant No.2008BAH37B05;the
National High Technology Research and Development Project of China under Grant
No.2007AA041201;the Project of Fundamental Research Funds for Central-affiliated
University of China under Grant No.N110216001.
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