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Harnessing Network Effect for Fake News Mitigation: Selecting Debunkers via Self-Imitation Learning
Conference proceeding

Harnessing Network Effect for Fake News Mitigation: Selecting Debunkers via Self-Imitation Learning

Xiaofei Xu, Ke Deng, Michael Dann and Xiuzhen Zhang
Proceedings of the 38th AAAI Conference on Artificial Intelligence, Vol.38(20), pp.22447-22456
38th AAAI Conference on Artificial Intelligence (Vancouver, Canada., 20/02/2024–27/02/2024)
25/02/2024

Abstract

Computer Science Computer Science, Artificial Intelligence Computer Science, Interdisciplinary Applications Computer Science, Theory & Methods Science & Technology Technology Reinforcement learning
This study aims to minimize the influence of fake news on social networks by deploying debunkers to propagate true news. This is framed as a reinforcement learning problem, where, at each stage, one user is selected to propagate true news. A challenging issue is episodic reward where the "net" effect of selecting individual debunkers cannot be discerned from the interleaving information propagation on social networks, and only the collective effect from mitigation efforts can be observed. Existing Self-Imitation Learning (SIL) methods have shown promise in learning from episodic rewards, but are illsuited to the real-world application of fake news mitigation because of their poor sample efficiency. To learn a more effective debunker selection policy for fake news mitigation, this study proposes NAGASIL - Negative sampling and state Augmented Generative Adversarial Self-Imitation Learning, which consists of two improvements geared towards fake news mitigation: learning from negative samples, and an augmented state representation to capture the "real" environment state by integrating the current observed state with the previous state-action pairs from the same campaign. Experiments on two social networks show that NAGASIL yields superior performance to standard GASIL and state-of-the-art fake news mitigation models.

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