Title:
Identifying and comparing features and facilities of scientic social networks for recommending collaborators
Zahra Roozbahani Jalal Rezaeenour Hanif Emamgholizadeh Markus Belkin
University of Qom, Qom, Iran University of Qom, Qom, Iran 3 Department of Computer Science, Yazd University, Yazd, Iran School of Medicine, Faculty of Health, Deakin University, Burwood, Australia
Abstract:
Social networks are now an inseparable part of our life, each of us use social network for a special purposes from social interaction to marketing. One of the ourishing aspects of social networks is scientic social networks; users of these networks try to make public proles, attach publications there, ask their questions and nd new collaborators for future work. Having been considered for the last several decades in the data management eld, recommending systems has also attracted a great deal of attention in computer science, and after the emergence of on-line social networks collaboration, suggestions for its use became an inseparable dimension of these young networks. In this paper some of the most popular and creative social networks have been considered, all of the useful features have been identied and compared, and nally the limitations of considered systems in providing direct collaborator recommendation has been discussed.
Keyword:
Social networks Recommending systems Collaborator recommendation Expertise nding