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Autori principali: Ohlin, David, Bencherki, Fethi, Tegling, Emma
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.13703
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author Ohlin, David
Bencherki, Fethi
Tegling, Emma
author_facet Ohlin, David
Bencherki, Fethi
Tegling, Emma
contents We study opinion evolution in networks of stubborn agents discussing a sequence of issues, modeled through the so called concatenated Friedkin-Johnsen (FJ) model. It is concatenated in the sense that agents' opinions evolve for each issue, and the final opinion is then taken as a starting point for the next issue. We consider the scenario where agents {also take a vote at the end of each issue} and propose a feedback mechanism from the result (based on the median voter) to the agents' stubbornness. Specifically, agents become increasingly stubborn during issue $s+1$ the more they disagree with the vote at the end of issue $s$. We analyze {this model} for a number of special cases and provide sufficient conditions for convergence to consensus stated in terms of permissible initial opinion and stubbornness. In the opposite scenario, where agents become less stubborn when disagreeing with the vote result, we prove that consensus is achieved{, and we demonstrate the faster convergence of opinions compared to constant stubbornness.
format Preprint
id arxiv_https___arxiv_org_abs_2405_13703
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Achieving consensus in networks of increasingly stubborn voters
Ohlin, David
Bencherki, Fethi
Tegling, Emma
Optimization and Control
We study opinion evolution in networks of stubborn agents discussing a sequence of issues, modeled through the so called concatenated Friedkin-Johnsen (FJ) model. It is concatenated in the sense that agents' opinions evolve for each issue, and the final opinion is then taken as a starting point for the next issue. We consider the scenario where agents {also take a vote at the end of each issue} and propose a feedback mechanism from the result (based on the median voter) to the agents' stubbornness. Specifically, agents become increasingly stubborn during issue $s+1$ the more they disagree with the vote at the end of issue $s$. We analyze {this model} for a number of special cases and provide sufficient conditions for convergence to consensus stated in terms of permissible initial opinion and stubbornness. In the opposite scenario, where agents become less stubborn when disagreeing with the vote result, we prove that consensus is achieved{, and we demonstrate the faster convergence of opinions compared to constant stubbornness.
title Achieving consensus in networks of increasingly stubborn voters
topic Optimization and Control
url https://arxiv.org/abs/2405.13703