Stand for Something or Fall for Everything: Predict Misinformation Spread with Stance-Aware Graph Neural Networks

18 Pages Posted: 26 Oct 2023

See all articles by Zihan Chen

Zihan Chen

Stevens Institute of Technology - School of Business

Jingyi Sun

Stevens Institute of Technology - School of Business

Rong Liu

Stevens Institute of Technology

Feng Mai

University of Iowa - Department of Business Analytics

Date Written: May 4, 2023

Abstract

Although pervasive spread of misinformation on social media platforms has become a pressing challenge, existing platform interventions have shown limited success in curbing its dissemination. In this study, we propose a stance-aware graph neural network (stance-aware GNN) that leverages users' stances to proactively predict misinformation spread. As different user stances can form unique echo chambers, we customize four information passing paths in stance-aware GNN, while the trainable attention weights provide explainability by highlighting each structure's importance. Evaluated on a real-world dataset, stance-aware GNN outperforms benchmarks by 32.65% and exceeds advanced GNNs without user stance by over 4.69%. Furthermore, the attention weights indicate that users' opposition stances have a higher impact on their neighbors' behaviors than supportive ones, which function as social correction to halt misinformation propagation. Overall, our study provides an effective predictive model for platforms to combat misinformation, and highlights the impact of user stances in the misinformation propagation.

Keywords: Misinformation Spread, User Stance, Graph Neural Networks, Echo Chamber, Online Platforms

JEL Classification: D83, D85, L86

Suggested Citation

Chen, Zihan and Sun, Jingyi and Liu, Rong and Mai, Feng, Stand for Something or Fall for Everything: Predict Misinformation Spread with Stance-Aware Graph Neural Networks (May 4, 2023). Available at SSRN: https://ssrn.com/abstract=4599470 or http://dx.doi.org/10.2139/ssrn.4599470

Zihan Chen (Contact Author)

Stevens Institute of Technology - School of Business ( email )

Hoboken, NJ 07030
United States

Jingyi Sun

Stevens Institute of Technology - School of Business ( email )

Hoboken, NJ 07030
United States

Rong Liu

Stevens Institute of Technology ( email )

Hoboken, NJ 07030
United States

Feng Mai

University of Iowa - Department of Business Analytics ( email )

Iowa City
United States

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