FauxWard: A Graph Neural Network Approach to Fauxtography Detection Using Social Media Comments
Lanyu Shang, Yang Zhang, Daniel Zhang, Dong Wang

TL;DR
FauxWard is a graph neural network framework that detects fauxtography on social media by analyzing user comment networks, effectively identifying misleading posts without analyzing the post content itself.
Contribution
This work introduces FauxWard, a novel GCN-based approach that leverages social media comment networks to detect fauxtography, addressing limitations of content-based methods.
Findings
Effective in identifying fauxtography on Reddit and Twitter
Robust against sophisticated content manipulation
Efficient in real-world social media scenarios
Abstract
Online social media has been a popular source for people to consume and share news content. More recently, the spread of misinformation online has caused widespread concerns. In this work, we focus on a critical task of detecting fauxtography on social media where the image and associated text together convey misleading information. Many efforts have been made to mitigate misinformation online, but we found that the fauxtography problem has not been fully addressed by existing work. Solutions focusing on detecting fake images or misinformed texts alone on social media often fail to identify the misinformation delivered together by the image and the associated text of a fauxtography post. In this paper, we develop FauxWard, a novel graph convolutional neural network framework that explicitly explores the complex information extracted from a user comment network of a social media post to…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
