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Exploring the power of social hub services

Gong, Qingyuan (author)
Fudan University, China
Chen, Yang (author)
Fudan University, China
Yu, Xiaolong (author)
Fudan University, China
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Xu, Chao (author)
Fudan University, China
Guo, Zhichun (author)
Fudan University, China
Xiao, Yu (author)
Aalto University, Finland
Ben Abdesslem, Fehmi (author)
RISE,SICS
Wang, Xin (author)
Fudan University, China
Hui, Pan (author)
University of Helsinki, Finland; Hong Kong University of Science and Technology, Hong Kong
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 (creator_code:org_t)
2018-09-25
2019
English.
In: World wide web (Bussum). - : Springer Science and Business Media LLC. - 1386-145X .- 1573-1413. ; 22:6, s. 2825-2852
  • Journal article (peer-reviewed)
Abstract Subject headings
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  • Given the diverse focuses of emerging online social networks (OSNs), it is common that a user has signed up on multiple OSNs. Social hub services, a.k.a., social directory services, help each user manage and exhibit her OSN accounts on one webpage. In this work, we conduct a data-driven study by crawling over one million user profiles from about.me, a representative online social hub service. Our study aims at gaining insights on cross-OSN social influence from the crawled data. We first analyze the composition of the social hub users. For each user, we collect her social accounts from her social hub webpage, and aggregate the content generated by these accounts on different OSNs to gain a comprehensive view of this user. According to our analysis, there is a high probability that a user would provide consistent information on different OSNs. We then explore the correlation between user activities on different OSNs, based on which we propose a cross-OSN social influence prediction model. With the model, we can accurately predict a user’s social influence on emerging OSNs, such as Instagram, Foursquare, and Flickr, based on her data published on well-established OSNs like Twitter.

Keyword

Machine learning
Measurement
Online social networks
Social hub services
Social influence
Learning systems
Social networking (online)
Directory service
Gaining insights
High probability
On-line social networks
Online social networks (OSNs)
User activity
Economic and social effects

Publication and Content Type

ref (subject category)
art (subject category)

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