Using Causality to Infer Coordinated Attacks in Social Media
Abstract
The rise of social media has been accompanied by a dark side with the ease of creating fake accounts and disseminating misinformation through coordinated attacks. Existing methods to identify such attacks often rely on thematic similarities or network-based approaches, overlooking the intricate causal relationships that underlie coordinated actions. This work introduces a novel approach for detecting coordinated attacks using Convergent Cross Mapping (CCM), a technique that infers causality from temporal relationships between user activity. We build on the theoretical framework of CCM by incorporating topic modelling as a basis for further optimizing its performance. We apply CCM to real-world data from the infamous IRA attack on US elections, achieving F1 scores up to 75.3% in identifying coordinated accounts. Furthermore, we analyse the output of our model to identify the most influential users in a community. We apply our model to a case study involving COVID-19 anti-vax related discussions on Twitter. Our results demonstrate the effectiveness of our model in uncovering causal structures of coordinated behaviour, offering a promising avenue for mitigating the threat of malicious campaigns on social media platforms.
Cite
@article{arxiv.2407.11690,
title = {Using Causality to Infer Coordinated Attacks in Social Media},
author = {Isura Manchanayaka and Zainab Razia Zaidi and Shanika Karunasekera and Christopher Leckie},
journal= {arXiv preprint arXiv:2407.11690},
year = {2024}
}
Comments
Accepted for International AAAI Conference on Web and Social Media (ICWSM 2025)