Back to Search Start Over

Socially Fair Mitigation of Misinformation on Social Networks via Constraint Stochastic Optimization

Authors :
Abouzeid, Ahmed
Granmo, Ole-Christoffer
Webersik, Christian
Goodwin, Morten
Publication Year :
2022

Abstract

Recent social networks' misinformation mitigation approaches tend to investigate how to reduce misinformation by considering a whole-network statistical scale. However, unbalanced misinformation exposures among individuals urge to study fair allocation of mitigation resources. Moreover, the network has random dynamics which change over time. Therefore, we introduce a stochastic and non-stationary knapsack problem, and we apply its resolution to mitigate misinformation in social network campaigns. We further propose a generic misinformation mitigation algorithm that is robust to different social networks' misinformation statistics, allowing a promising impact in real-world scenarios. A novel loss function ensures fair mitigation among users. We achieve fairness by intelligently allocating a mitigation incentivization budget to the knapsack, and optimizing the loss function. To this end, a team of Learning Automata (LA) drives the budget allocation. Each LA is associated with a user and learns to minimize its exposure to misinformation by performing a non-stationary and stochastic walk over its state space. Our results show how our LA-based method is robust and outperforms similar misinformation mitigation methods in how the mitigation is fairly influencing the network users.<br />Comment: These 14-pages paper is a version with appendices so that I can cite appendices in the original version of the paper which was accepted and submitted to AAAI22

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.12537
Document Type :
Working Paper