Title
Worship prediction: identify followers in celebrity-dived networks.
Abstract
We in this paper explore a new link prediction paradigm, called ‘worship’ prediction, to discover worship links between users and celebrities on social networks. The prediction of ‘worship’ links enables valuable social services, such as viral marketing, popularity estimation, and celebrity recommendation. However, as the concern of business security and personal privacy, only public-accessible statistical social properties, instead of the detailed information of users, can be utilized to predict the ‘worship’ labels. In addition, we observe that friendship properties are not effective to predict the desired links, meaning that most of previous work which rely on the friendship properties cannot be successfully applied in the prediction of worship link. To address these issues, a novel learning framework is devised, including a factor graph with new discovered statistical properties and a Gaussian estimation based learning algorithm with active learning. Our experimental studies on real data, including Instagram, Twitter and DBLP, show that the proposed learning framework can overcome the problem of missing labels and efficiently discover worship links.
Year
DOI
Venue
2019
10.1007/s11280-018-0569-y
World Wide Web
Keywords
Field
DocType
Link prediction, Social network, Worship prediction
Factor graph,Data science,Viral marketing,Social network,Active learning,Friendship,Computer science,Popularity,Artificial intelligence,Worship,Machine learning,Social Welfare
Journal
Volume
Issue
ISSN
22
1
1573-1413
Citations 
PageRank 
References 
0
0.34
25
Authors
4
Name
Order
Citations
PageRank
Shan-Yun Teng153.45
Lo Pang-Yun Ting231.40
Mi-Yen Yeh326825.85
Kun-Ta Chuang425244.61