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Main Authors: Veider, Fabian, Jäger, Georg, Tang, Bao Quoc
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.14319
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author Veider, Fabian
Jäger, Georg
Tang, Bao Quoc
author_facet Veider, Fabian
Jäger, Georg
Tang, Bao Quoc
contents The rise of social media and recommendation algorithms has sparked concerns about their role in fostering opinion polarization and echo chambers. We study these phenomena using an adaptive voter model to compare two connection mechanisms: "free" global rewiring, where individuals connect with anyone sharing their opinion, and "friend-of-a-friend" local rewiring, which mimics algorithmic link recommendations on platforms like Facebook or LinkedIn. Simulations across different network topologies reveal that local rewiring increases final-state polarization of the system and fragments social networks into many disconnected components. The usual phase transition into two disconnected components turns into a fragmentation of smaller components, leading to an increase in echo chambers as well as many isolated nodes. This effect is most pronounced in clustered networks with high homophily in rewiring, illustrating how recommendation algorithms can intensify social fragmentation by changing the very structure of the network.
format Preprint
id arxiv_https___arxiv_org_abs_2601_14319
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle How Recommendation Algorithms Shape Social Networks: An Adaptive Voter Model Approach
Veider, Fabian
Jäger, Georg
Tang, Bao Quoc
Physics and Society
The rise of social media and recommendation algorithms has sparked concerns about their role in fostering opinion polarization and echo chambers. We study these phenomena using an adaptive voter model to compare two connection mechanisms: "free" global rewiring, where individuals connect with anyone sharing their opinion, and "friend-of-a-friend" local rewiring, which mimics algorithmic link recommendations on platforms like Facebook or LinkedIn. Simulations across different network topologies reveal that local rewiring increases final-state polarization of the system and fragments social networks into many disconnected components. The usual phase transition into two disconnected components turns into a fragmentation of smaller components, leading to an increase in echo chambers as well as many isolated nodes. This effect is most pronounced in clustered networks with high homophily in rewiring, illustrating how recommendation algorithms can intensify social fragmentation by changing the very structure of the network.
title How Recommendation Algorithms Shape Social Networks: An Adaptive Voter Model Approach
topic Physics and Society
url https://arxiv.org/abs/2601.14319