Learning Automata-based Misinformation Mitigation via Hawkes Processes

Author:

Abouzeid AhmedORCID,Granmo Ole-Christoffer,Webersik Christian,Goodwin Morten

Abstract

AbstractMitigating misinformation on social media is an unresolved challenge, particularly because of the complexity of information dissemination. To this end, Multivariate Hawkes Processes (MHP) have become a fundamental tool because they model social network dynamics, which facilitates execution and evaluation of mitigation policies. In this paper, we propose a novel light-weight intervention-based misinformation mitigation framework using decentralized Learning Automata (LA) to control the MHP. Each automaton is associated with a single user and learns to what degree that user should be involved in the mitigation strategy by interacting with a corresponding MHP, and performing a joint random walk over the state space. We use three Twitter datasets to evaluate our approach, one of them being a new COVID-19 dataset provided in this paper. Our approach shows fast convergence and increased valid information exposure. These results persisted independently of network structure, including networks with central nodes, where the latter could be the root of misinformation. Further, the LA obtained these results in a decentralized manner, facilitating distributed deployment in real-life scenarios.

Publisher

Springer Science and Business Media LLC

Subject

Computer Networks and Communications,Information Systems,Theoretical Computer Science,Software

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1. Machine learning, misinformation, and citizen science;European Journal for Philosophy of Science;2023-11-22

2. Studying the Impact of Social Media Algorithms on the Spread of Misinformation and its Effects on Society;International Journal of Advanced Research in Science, Communication and Technology;2023-09-29

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4. Drug Treatment Effect Model Based on MODWT and Hawkes Self-Exciting Point Process;Computational and Mathematical Methods in Medicine;2022-10-14

5. MMSS: A storytelling simulation software to mitigate misinformation on social media;Software Impacts;2022-08

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