Awesome
Attacking Fake News Detectors via Manipulating News Social Engagement
Paper
Implementation for our WWW'23 paper below:
@inproceedings{wang2023attacking,
title={Attacking Fake News Detectors via Manipulating News Social Engagement},
author={Wang, Haoran and Dou, Yingtong and Chen, Canyu and Sun, Lichao and Yu, Philip S and Shu, Kai},
booktitle={Proceedings of the ACM Web Conference 2023},
year={2023}
}
Setup
To run the code, you need FakeNewsNet dataset. Due to Twitter privacy concerns, we cannot release user Tweet data.
Please send email with the title MARL Dataset Request
to hwang219@hawk.iit.edu to download the file with user raw Tweet data. You can unzip the dataset file under the root directory of the project.
Run the code
cd MARL
To run the two random baselines:
python attack_base.py
To run MARL:
python attack.py