English
 
Privacy Policy Disclaimer
  Advanced SearchBrowse

Item

ITEM ACTIONSEXPORT

Released

Journal Article

Modelling opinion dynamics under the impact of influencer and media strategies

Authors
/persons/resource/helfmann.luzie

Helfmann,  Luzie
Potsdam Institute for Climate Impact Research;

Djurdjevac Conrad,  Nataša
External Organizations;

Lorenz-Spreen,  Philipp
External Organizations;

Schütte,  Christof
External Organizations;

External Ressource
Fulltext (public)

helfmann_2023_s41598-023-46187-9.pdf
(Publisher version), 2MB

Supplementary Material (public)
There is no public supplementary material available
Citation

Helfmann, L., Djurdjevac Conrad, N., Lorenz-Spreen, P., Schütte, C. (2023): Modelling opinion dynamics under the impact of influencer and media strategies. - Scientific Reports, 13, 19375.
https://doi.org/10.1038/s41598-023-46187-9


Cite as: https://publications.pik-potsdam.de/pubman/item/item_29380
Abstract
Digital communication has made the public discourse considerably more complex, and new actors and strategies have emerged as a result of this seismic shift. Aside from the often-studied interactions among individuals during opinion formation, which have been facilitated on a large scale by social media platforms, the changing role of traditional media and the emerging role of “influencers” are not well understood, and the implications of their engagement strategies arising from the incentive structure of the attention economy even less so. Here we propose a novel framework for opinion dynamics that can accommodate various versions of opinion dynamics as well as account for different roles, namely that of individuals, media and influencers, who change their own opinion positions on different time scales. Numerical simulations of instances of this framework show the importance of their relative influence in creating qualitatively different opinion formation dynamics: with influencers, fragmented but short-lived clusters emerge, which are then counteracted by more stable media positions. The framework allows for mean-field approximations by partial differential equations, which reproduce those dynamics and allow for efficient large-scale simulations when the number of individuals is large. Based on the mean-field approximations, we can study how strategies of influencers to gain more followers can influence the overall opinion distribution. We show that moving towards extreme positions can be a beneficial strategy for influencers to gain followers. Finally, our framework allows us to demonstrate that optimal control strategies allow other influencers or media to counteract such attempts and prevent further fragmentation of the opinion landscape. Our modelling framework contributes to a more flexible modelling approach in opinion dynamics and a better understanding of the different roles and strategies in the increasingly complex information ecosystem.