The Impact of External Sources on the Friedkin-Johnsen Model
April 11, 2025 Β· Declared Dead Β· π International Conference on Information and Knowledge Management
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Authors
Charlotte Out, Sijing Tu, Stefan Neumann, Ahad N. Zehmakan
arXiv ID
2504.08413
Category
cs.SI: Social & Info Networks
Citations
2
Venue
International Conference on Information and Knowledge Management
Last Checked
4 months ago
Abstract
To obtain a foundational understanding of timeline algorithms and viral content in shaping public opinions, computer scientists started to study augmented versions of opinion formation models from sociology. In this paper, we generalize the popular Friedkin--Johnsen model to include the effects of external media sources on opinion formation. Our goal is to mathematically analyze the influence of biased media, arising from factors such as manipulated news reporting or the phenomenon of false balance. Within our framework, we examine the scenario of two opposing media sources, which do not adapt their opinions like ordinary nodes, and analyze the conditions and the number of periods required for radicalizing the opinions in the network. When both media sources possess equal influence, we theoretically characterize the final opinion configuration. In the special case where there is only a single media source present, we prove that media sources which do not adapt their opinions are significantly more powerful than those which do. Lastly, we conduct the experiments on real-world and synthetic datasets, showing that our theoretical guarantees closely align with experimental simulations.
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