Analyzing behavioral changes of Twitter users after exposure to misinformation

Autor: Yichen Wang, Tamara Lehman, Richard Han, Qin Lv, Shivakant Mishra
Rok vydání: 2021
Předmět:
Zdroj: Proceedings of the 2021 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining.
DOI: 10.1145/3487351.3492718
Popis: Social media platforms have been exploited to disseminate misinformation in recent years. The widespread online misinformation has been shown to affect users' beliefs and is connected to social impact such as polarization. In this work, we focus on misinformation's impact on specific user behavior and aim to understand whether general Twitter users changed their behavior after being exposed to misinformation. We compare the before and after behavior of exposed users to determine whether the frequency of the tweets they posted, or the sentiment of their tweets underwent any significant change. Our results indicate that users overall exhibited statistically significant changes in behavior across some of these metrics. Through language distance analysis, we show that exposed users were already different from baseline users before the exposure. We also study the characteristics of two specific user groups, multi-exposure and extreme change groups, which were potentially highly impacted. Finally, we study if the changes in the behavior of the users after exposure to misinformation tweets vary based on the number of their followers or the number of followers of the tweet authors, and find that their behavioral changes are all similar.
Accepted to FOSINT-SI, co-located with ASONAM 2021
Databáze: OpenAIRE