References
- Statista, Number of Monthly Active Twitter Users Worldwide from 1st quarter 2010 to 4th quarter 2016 (in millions) [Internet], https://www.statista.com/statistics/282087/numberof-monthly-active-twitter-users/.
- David Sayce, Number of tweets per day? [Internet], http://www.dsayce.com/social-media/tweets-day/.
- L. M. Aiello et al., "Sensing Trending Topics in Twitter," IEEE Trans. Multimedia., Vol.15, No.6, pp.1268-1282, 2013. https://doi.org/10.1109/TMM.2013.2265080
- T. Sakaki, M. Okazaki, and Y. Matsuo, "Earthquake Shakes Twitter Users: Real-Time Event Detection by Social Sensors," in Proc. 19th International Conference on World Wide Web, ACM, pp. 851-860, 2010.
- A. I. Baqapuri, S. Saleh, M. U. Ilyas, "Sentiment Classification of Tweets using Hierarchical Classification," in Proc. IEEE International Conference on Communications, IEEE, 2016.
- Neal Ungerleider, Almost 10% of Twitter Is Spam [Internet], https://www.fastcompany.com/3044485/almost-10-of-twitter-is-spam/.
- Judy Mottl, Twitter acknowledges 23 million active users are actually bots [Internet], http://www.techtimes.com/articles/12840/20140812/twitter-acknowledges-14-percent-users-bot s-5-percent-spam-bots.htm/.
- C. Chen, J. Zhang, Y. Xiang, W. Zhou, and J. Oliver, "Spammers Are Becoming "Smarter" on Twitter," IEEE Trans. IT Professional., Vol.18, No.2, pp.66-70, 2016.
- H. J. Choi and C. H. Park, "A Twitter Spam Detection Method based on n-gram Dictionary," in Proc. Korea Computer Congress, Jeju, pp.227-229, 2017.
- K. Tao, F. Abel, C. Hauff, G. J. Houben, and U. Gadiraju, "Groundhog Day: Near-Duplicate Detection on Twitter," in Proc. 22nd International Conference on World Wide Web, ACM, pp.1273-1284, 2013.
- K. M. Lee, J. Caverlee, and S. Webb, "Uncovering social spammers : social honeypots + machine learning," in Proc. 33rd International ACM SIGIR Conference on Research and Development in Information Retrieval, ACM, pp.435-442, 2010.
- F. Benevenuto, G. magno, T. Rodrigues, and V. Almeida, "Detecting spammers on Twitter," Presented at the 7th annual Collaboration Electronic Messaging Anti-Abuse Spam Conference (CEAS), Vol.6, 2010.
- A. H. Wang, "Don't follow me : spam detection in twitter," in Proc. International Conference on Security and Cryptography (SECRYPT), 2010.
- S. Liu, J. Zhang, and Y. Xiang, "Statistical Detection of Online Drifting Twitter Spam," in Proc. 11th ACM on Asia Conference on Computer and Communications Security, ACM, pp.1-10, 2016.
- C. Chen, et al, "A Performance Evaluation of Machine Learning-Based Streaming Spam Tweet Detection," IEEE Trans. Computational Social Systems, Vol.2, No.3, pp.65-75. 2015. https://doi.org/10.1109/TCSS.2016.2516039
- C. Chen, J. Zhang, Y. Xiang, and W. Zhou, "Asymmetric Self-Learning for Tackling Twitter Spam Drift," in Proc. IEEE Conference on Computer Communications Workshops, IEEE, pp.208-213, 2015.
- G. Stringhini, C. Kruegel, and G. Vigna, "Detecting spammers on social networks," in Proc. 26th Annual Computer Security Applications Conference, ACM, pp.1-9, 2010.
- J. Song, S. Lee, and J. Kim, "Spam filtering in Twitter using sender-reeiver relationship," in Proc. 14th International Conference on Recent Advances in Intrusion Detection, Springer Berlin/Heidelberg, pp.301-317, 2011.
- C. Yang, R. Harkreader, and G. Gu, "Empirical evaluation and new design for fighting evolving twitter spammers," IEEE Trans. Information Forensics and Security, Vol.8, No. 8, pp.1280-1293, 2013. https://doi.org/10.1109/TIFS.2013.2267732
- K. Thomas, C. Grier, J. Ma, V. Paxson, and D. Song, "Design and evaluation of a real-time URL spam filtering service," in Proc. IEEE Symposium on Security and Privacy, Washington, pp.447-462, 2011.
- S. H. Lee and J. Kim, "Warningbird : A near real-time detection system for suspicious URLs in Twitter spammers," IEEE Trans. Information Forensics and Security, Vol.8, No. 8, pp.1280-1293, 2013 https://doi.org/10.1109/TIFS.2013.2267732
- D. M. Freeman, "Using Naive Bayes to Detect Spammy Names in Social Networks," in Proc. the 2013 ACM Workshop on Artificial Intelligence and Security, ACM, pp. 3-12, 2013
- A. Herdagdelen, "Twitter n-gram corpus with demographic metadata," Language Resources and Evaluation, Vol.47, No. 4, pp.1127-1147, 2013. https://doi.org/10.1007/s10579-013-9227-2
- S. J. Lee and D. J. Choi, "Personalized Mobile Junk Message Filtering System," The Journal of the Korea Contents Association, Vol.11, No.12, pp.122-135, 2010. https://doi.org/10.5392/JKCA.2011.11.12.122
- H. N. Lee, M. G. Song, and E. G. Im, "A Study on Structuring Spam Short Message Service(SMS) filter," in Proc. Symposium of the Korean Institute of communications and Information Sciences, pp.1072-1073, 2011.
- S. W. Lee, "Spam Filter by Using X2 Statistics and Support Vector Machines," KIPS Journal B (2001-2012), Vol.17B, No.3, pp.249-254, 2010.
- I. W. Joe and H. T. Shim, "A SVM-based Spam Filtering System for Short Message Service (SMS)," The Journal of The Korean Institute of Communication Sciences, Vol.34, No.9, pp.908-913, 2009.
- Y. H. Kim et al., "Spam Twit Filtering using NaÏve Bayesian Algorithm and URL Analysis," in Proc. Korean Institute of Information Scientists and Engineers, Vol.38, No.2B, pp. 375-378, Nov., 2011.
- Twitter, Inc., Streaming APIs [Internet], https://dev.twitter.com/streaming/overview.
- Cyren, Q3 Trend Report Highlights Real-Time Malware Campagigns And Increase In Phishing [Internet], https://blog.cyren.com/articles/commtouch-internet-threats-trendreport-q3-2013.html.
- V. Metsis, I. Androutsopoulos, and G. Paliouras, "Spam Filtering with Naive Bayes-Which Naive Bayes?," in Proc. the Third Conference on Email and Anti-Spam, pp.28-69, 2006.
- J. Graovac, "Text Categorization Using n-Gram Based Language Independent Techniques," in Proc. 35th Anniversary of Computational Linguistics, pp.124-135, 2014.
- Machine Learning Group at the University of Waikato, Weka3: Data Mining Software in Java [Internet], http://www.cs.waikato.ac.nz/ml/weka/.