1
A language framework for modeling social media account behavior
2
Anatomy of an AI-powered malicious social botnet
3
Addressing the harms of AI-generated inauthentic content
4
Social bot detection in the age of ChatGPT: Challenges and opportunities
5
The Interconnected Nature of Online Harm and Moderation: Investigating the Cross-Platform Spread of Harmful Content between YouTube and Twitter
6
Tracking Fringe and Coordinated Activity on Twitter Leading Up To the US Capitol Attack
7
ChatGPT or Human? Detect and Explain. Explaining Decisions of Machine Learning Model for Detecting Short ChatGPT-generated Text
8
Propaganda and Misinformation on Facebook and Twitter during the Russian Invasion of Ukraine
9
Twitter Spam and False Accounts Prevalence, Detection and Characterization: A Survey
10
Identifying and Characterizing Behavioral Classes of Radicalization within the QAnon Conspiracy on Twitter
11
How does Twitter account moderation work? Dynamics of account creation and suspension on Twitter during major geopolitical events
12
One Year of COVID-19 Vaccine Misinformation on Twitter: Longitudinal Study
13
Investigating the difference between trolls, social bots, and humans on Twitter
14
The Disinformation Dozen: An Exploratory Analysis of Covid-19 Disinformation Proliferation on Twitter
15
Pathways through Conspiracy: The Evolution of Conspiracy Radicalization through Engagement in Online Conspiracy Discussions
16
TrollMagnifier: Detecting State-Sponsored Troll Accounts on Reddit
17
Online misinformation is linked to early COVID-19 vaccination hesitancy and refusal
18
Down the bot hole: Actionable insights from a one-year analysis of bot activity on Twitter
19
Misinformation, manipulation, and abuse on social media in the era of COVID-19
20
TrollHunter [Evader]: Automated Detection [Evasion] of Twitter Trolls During the COVID-19 Pandemic
21
#Election2020: the first public Twitter dataset on the 2020 US Presidential election
22
The COVID-19 Infodemic: Infodemiology Study Analyzing Stigmatizing Search Terms
24
Content-based features predict social media influence operations
25
Detecting Troll Behavior via Inverse Reinforcement Learning: A Case Study of Russian Trolls in the 2016 US Election
26
Evolution of bot and human behavior during elections
27
Linguistic Cues to Deception: Identifying Political Trolls on Social Media
28
A Graph-Based Machine Learning Approach for Bot Detection
29
RTbust: Exploiting Temporal Patterns for Botnet Detection on Twitter
30
Red Bots Do It Better:Comparative Analysis of Social Bot Partisan Behavior
31
Still out there: Modeling and Identifying Russian Troll Accounts on Twitter
32
Analysing user identity via time-sensitive semantic edit distance (t-SED): a case study of Russian trolls on Twitter
33
Characterizing the 2016 Russian IRA influence campaign
34
Who Let The Trolls Out?: Towards Understanding State-Sponsored Trolls
35
Why So Serious?: Survey Trolls and Misinformation
36
The spread of true and false news online
37
Bots increase exposure to negative and inflammatory content in online social systems
38
Deep Neural Networks for Bot Detection
39
E-Cigarette Surveillance With Social Media Data: Social Bots, Emerging Topics, and Trends
40
Measuring and moderating opinion polarization in social networks
41
Social Fingerprinting: Detection of Spambot Groups Through DNA-Inspired Behavioral Modeling
42
DeBot: Twitter Bot Detection via Warped Correlation
43
Social Bots Distort the 2016 US Presidential Election Online Discussion
44
Neural networks and Deep Learning
45
Echo Chambers: Emotional Contagion and Group Polarization on Facebook
46
The cyberspace war: propaganda and trolling as warfare tools
47
Unsupervised Clickstream Clustering for User Behavior Analysis
48
Emotional Dynamics in the Age of Misinformation
49
What Do Retweets Indicate? Results from User Survey and Meta-Review of Research
50
"Manipulation and abuse on social media" by Emilio Ferrara with Ching-man Au Yeung as coordinator
51
The rise of social bots
52
Does the Phonology of L1 Show Up in L2 Texts?
53
Towards the design of a platform for abuse detection in OSNs using multimedial data analysis
54
Social Media and the Elections
55
The Filter Bubble: What the Internet Is Hiding from You
56
Sources of linguistic knowledge in the second language acquisition of English articles
57
Exploratory Under-Sampling for Class-Imbalance Learning
58
Proceedings of the international AAAI conference on web and social media Ezzeddine et al
59
Swedish symposium on deep learning Ezzeddine et al
60
Additional steps we’re taking ahead of the 2020 US election
61
Behavior-Based Machine Learning Approaches to Identify State-Sponsored Trolls on Twitter
62
Social media against society. The Internet and the
63
Twitter’s list of 2,752 russian trolls
64
Identifying russian trolls on reddit with deep learning and bert word embeddings
65
The Mueller Report: Report on the Investigation Into Russian Interference in the 2016 Presidential Election
66
Firearm detection in social media images
67
Twitter deleted russian troll tweets. so we published more than 200,000 of them
68
St. petersburg troll farm had 90 dedicated staff working to influence us election campaign
69
Dropout: a simple way to prevent neural networks from overfitting
70
Class imbalance and cost sensitivity: Why undersampling beats oversampling