Modelling Non-Linear Consensus Dynamics on Hypergraphs
July 18, 2020 Β· Declared Dead Β· π Journal of Physics: Complexity
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Authors
Rohit Sahasrabuddhe, Leonie NeuhΓ€user, Renaud Lambiotte
arXiv ID
2007.09391
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
45
Venue
Journal of Physics: Complexity
Last Checked
3 months ago
Abstract
The basic interaction unit of many dynamical systems involves more than two nodes. In such situations where networks are not an appropriate modelling framework, it has recently become increasingly popular to turn to higher-order models, including hypergraphs. In this paper, we explore the non-linear dynamics of consensus on hypergraphs, allowing for interactions within hyperedges of any cardinality. After discussing the different ways in which non-linearities can be incorporated in the dynamical model, building on different sociological theories, we explore its mathematical properties and perform simulations to investigate them numerically. After focussing on synthetic hypergraphs, namely on block hypergraphs, we investigate the dynamics on real-world structures, and explore in detail the role of involvement and stubbornness on polarisation.
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