Popis: |
Cyberbullying and cyberaggression are increasingly worri- some phenomena affecting people across all demographics. More than half of young social media users worldwide have been exposed to such prolonged and/or coordinated digital ha- rassment. Victims can experience a wide range of emotions, with negative consequences such as embarrassment, depres- sion, isolation from other community members, which embed the risk to lead to even more critical consequences, such as suicide attempts. In this work, we take the first concrete steps to understand the characteristics of abusive behavior in Twitter, one of to- day’s largest social media platforms. We analyze 1.2 million users and 2.1 million tweets, comparing users participating in discussions around seemingly normal topics like the NBA, to those more likely to be hate-related, such as the Gamer- gate controversy, or the gender pay inequality at the BBC sta- tion. We also explore specific manifestations of abusive be- havior, i.e., cyberbullying and cyberaggression, in one of the hate-related communities (Gamergate). We present a robust methodology to distinguish bullies and aggressors from nor- mal Twitter users by considering text, user, and network-based attributes. Using various state-of-the-art machine learning al- gorithms, we classify these accounts with over 90% accuracy and AUC. Finally, we discuss the current status of Twitter user accounts marked as abusive by our methodology, and study the performance of potential mechanisms that can be used by Twitter to suspend users in the future. |