Addressing the class imbalance problem in Twitter spam detection using ensemble learning

Liu, Shigang, Wang, Yu, Zhang, Jun, Chen, Chao and Xiang, Yang 2017, Addressing the class imbalance problem in Twitter spam detection using ensemble learning, Computers & security, vol. 69, pp. 35-49, doi: 10.1016/j.cose.2016.12.004.

Attached Files
Name Description MIMEType Size Downloads

Title Addressing the class imbalance problem in Twitter spam detection using ensemble learning
Author(s) Liu, Shigang
Wang, Yu
Zhang, JunORCID iD for Zhang, Jun orcid.org/0000-0002-2189-7801
Chen, Chao
Xiang, YangORCID iD for Xiang, Yang orcid.org/0000-0001-5252-0831
Journal name Computers & security
Volume number 69
Start page 35
End page 49
Total pages 15
Publisher Elsevier
Place of publication Kidlington, Eng.
Publication date 2017-08
ISSN 0167-4048
1872-6208
Keyword(s) online social networks
Twitter
spam detection
machine learning
class imbalance
Science & Technology
Technology
Computer Science, Information Systems
Computer Science
Language eng
DOI 10.1016/j.cose.2016.12.004
Field of Research 08 Information And Computing Sciences
0807 Library and Information Studies
1005 Communications Technologies
HERDC Research category C1 Refereed article in a scholarly journal
ERA Research output type C Journal article
Copyright notice ©2016, Elsevier
Persistent URL http://hdl.handle.net/10536/DRO/DU:30093664

Document type: Journal Article
Collection: School of Information Technology
Connect to link resolver
 
Unless expressly stated otherwise, the copyright for items in DRO is owned by the author, with all rights reserved.

Versions
Version Filter Type
Citation counts: TR Web of Science Citation Count  Cited 1 times in TR Web of Science
Scopus Citation Count Cited 2 times in Scopus
Google Scholar Search Google Scholar
Access Statistics: 88 Abstract Views, 1 File Downloads  -  Detailed Statistics
Created: Tue, 03 Oct 2017, 14:00:13 EST

Every reasonable effort has been made to ensure that permission has been obtained for items included in DRO. If you believe that your rights have been infringed by this repository, please contact drosupport@deakin.edu.au.