Detecting political bias trolls in Twitter data
Document Type
Conference Proceeding
Publication Date
1-1-2019
Abstract
Ever since Russian trolls have been brought to light, their interference in the 2016 US Presidential elections has been monitored and studied. These Russian trolls employ fake accounts registered on several major social media sites to influence public opinion in other countries. Our work involves discovering patterns in these tweets and classifying them by training different machine learning models such as Support Vector Machines, Word2vec, Google BERT, and neural network models, and then applying them to several large Twitter datasets to compare the effectiveness of the different models. Two classification tasks are utilized for this purpose. The first one is used to classify any given tweet as either troll or non-troll tweet. The second model classifies specific tweets as coming from left trolls or right trolls, based on apparent extreme political orientations. On the given data sets, Google BERT provides the best results, with an accuracy of 89.4% for the left/right troll detector and 99% for the troll/non-troll detector. Temporal, geographic, and sentiment analyses were also performed and results were visualized.
Identifier
85074248570 (Scopus)
ISBN
[9789897583865]
Publication Title
Webist 2019 Proceedings of the 15th International Conference on Web Information Systems and Technologies
External Full Text Location
https://doi.org/10.5220/0008350303340342
First Page
334
Last Page
342
Grant
1624503
Fund Ref
National Research Foundation of Korea
Recommended Citation
Chun, Soon Ae; Holowczak, Richard; Dharan, Kannan Neten; Wang, Ruoyu; Basu, Soumaydeep; and Geller, James, "Detecting political bias trolls in Twitter data" (2019). Faculty Publications. 8092.
https://digitalcommons.njit.edu/fac_pubs/8092
