Detecting spamming activities in Twitter based on deep-learning technique

Wu, Tingmin, Wen, Sheng, Liu, Shigang, Zhang, Jun, Xiang, Yang, Alrubaian, Majed and Hassan, Mohammad Mehedi 2017, Detecting spamming activities in Twitter based on deep-learning technique, Concurrency and computation: practice and experience, vol. 29, no. 19, Special issue: Combined special issues on high performance and security in cloud computing (CloudCom-Asia2016) and new trends and innovative methods in cloud computing and big data (CBD-BDCloud2016), pp. 1-11, doi: 10.1002/cpe.4209.

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Title Detecting spamming activities in Twitter based on deep-learning technique
Author(s) Wu, Tingmin
Wen, Sheng
Liu, Shigang
Zhang, JunORCID iD for Zhang, Jun orcid.org/0000-0002-2189-7801
Xiang, YangORCID iD for Xiang, Yang orcid.org/0000-0001-5252-0831
Alrubaian, Majed
Hassan, Mohammad Mehedi
Journal name Concurrency and computation: practice and experience
Volume number 29
Issue number 19
Season Special issue: Combined special issues on high performance and security in cloud computing (CloudCom-Asia2016) and new trends and innovative methods in cloud computing and big data (CBD-BDCloud2016)
Start page 1
End page 11
Total pages 11
Publisher Wiley
Place of publication Chichester, Eng.
Publication date 2017-10-10
ISSN 1532-0626
1532-0634
Keyword(s) deep learning
social media security
twitter spam detection
Science & Technology
Technology
Computer Science, Software Engineering
Computer Science, Theory & Methods
Computer Science
Language eng
DOI 10.1002/cpe.4209
Field of Research 0805 Distributed Computing
0803 Computer Software
HERDC Research category C1 Refereed article in a scholarly journal
ERA Research output type C Journal article
Copyright notice ©2017, Wiley
Persistent URL http://hdl.handle.net/10536/DRO/DU:30098812

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