Title
Academic social networks: Modeling, analysis, mining and applications
Abstract
In the fast-growing scholarly big data background, social network technologies have recently aroused widespread attention in academia and industry. The concept of academic social networks is created precisely in the context of scholarly big data, which refers to the complicated academic network formed by academic entities and their relationships. There are a wealth of scholarly big data processing methods to analyze the rich structural types and related information about academic social networks. Nowadays, various academic data can be easily obtained, which makes it easier for us to analyze and study academic social networks. This study investigates the background, the current status, and trends of academic social networks. We first elaborate on the concept of academic social networks and related research background. Secondly, we analyze models based on nodes' types and timeliness. Thirdly, we review analytical methods, including relevant metrics, network properties, and available academic analysis tools. Furthermore, we sort out some key mining technologies for academic social networks. Finally, we systematically review representative research tasks in this domain from three levels: actor, relationship, and network. In addition, some academic social networking sites are presented. This survey concludes with the current challenges and open issues.
Year
DOI
Venue
2019
10.1016/j.jnca.2019.01.029
Journal of Network and Computer Applications
Keywords
Field
DocType
Academic social networks,Science of science,Scholarly data,Academic applications
Big data processing,Analysis tools,Data science,Social network,Computer science,sort,Computer network,Big data
Journal
Volume
ISSN
Citations 
132
1084-8045
10
PageRank 
References 
Authors
0.57
132
5
Search Limit
100132
Name
Order
Citations
PageRank
Xiangjie Kong142546.56
Yajie Shi2100.57
Shuo Yu36813.95
Jiaying Liu486083.96
Feng Xia52013153.69