Distributed Averaging in Opinion Dynamics
Petra Berenbrink, Colin Cooper, Cristina Gava, David Kohan Marzag\~ao,, Frederik Mallmann-Trenn, Nicol\'as Rivera, Tomasz Radzik

TL;DR
This paper analyzes two asynchronous opinion dynamics models on graphs, showing convergence to the average initial opinion, with bounds on variance and convergence time, and introduces a duality with correlated random walks.
Contribution
It provides tight variance bounds for regular graphs, analyzes convergence times, and introduces a novel duality with correlated random walks for opinion dynamics.
Findings
Values converge to the initial average or degree-weighted average.
Variance is negligible when initial values are node-independent.
Convergence time bounds are asymptotically tight.
Abstract
We consider two simple asynchronous opinion dynamics on arbitrary graphs where every node has an initial value . In the first process, the NodeModel, at each time step , a random node and a random sample of of its neighbours are selected. Then, updates its current value to , where and are parameters of the process. In the second process, the EdgeModel, at each step a random pair of adjacent nodes is selected, and then node updates its value equivalently to the NodeModel with and as the selected neighbour. For both processes, the values of all nodes converge to , a random variable depending on the random choices made in each step. For the NodeModel and regular graphs, and for the EdgeModel and…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques
