Title of article :
Predicting and recommending collaborations: An author-, institution-, and country-level analysis
Author/Authors :
Yan، نويسنده , , Erjia and Guns، نويسنده , , Raf، نويسنده ,
Issue Information :
فصلنامه با شماره پیاپی سال 2014
Abstract :
This study examines collaboration dynamics with the goal to predict and recommend collaborations starting from the current topology. Author-, institution-, and country-level collaboration networks are constructed using a ten-year data set on library and information science publications. Different statistical approaches are applied to these collaboration networks. The study shows that, for the employed data set in particular, higher-level collaboration networks (i.e., country-level collaboration networks) tend to yield more accurate prediction outcomes than lower-level ones (i.e., institution- and author-level collaboration networks). Based on the recommended collaborations of the data set, this study finds that neighbor-information-based approaches are more clustered on a 2-D multidimensional scaling map than topology-based ones. Limitations of the applied approaches on sparse collaboration networks are also discussed.
Keywords :
Dynamics , Collaboration , Link prediction , coauthorship , Networks
Journal title :
Journal of Informetrics
Journal title :
Journal of Informetrics