Long ties accelerate noisy threshold-based contagions
Dean Eckles, Elchanan Mossel, M. Amin Rahimian, Subhabrata Sen

TL;DR
This paper demonstrates that in noisy threshold-based social contagion models, introducing random long edges accelerates the spread of behaviors, challenging previous beliefs that clustering facilitates contagion.
Contribution
It shows that adding noise and random rewiring in threshold models reverses prior conclusions, revealing that long edges can speed up complex contagion spread.
Findings
Random rewiring accelerates contagion in noisy threshold models.
Noise in adoption decisions enables long edges to facilitate spread.
Simulations confirm robustness across various network structures.
Abstract
Network structure can affect when and how widely new ideas, products, and behaviors are adopted. In widely-used models of biological contagion, interventions that randomly rewire edges (on average making them "longer") accelerate spread. However, there are other models relevant to social contagion, such as those motivated by myopic best-response in games with strategic complements, in which an individual's behavior is described by a threshold number of adopting neighbors above which adoption occurs (i.e., complex contagions). Recent work has argued that highly clustered, rather than random, networks facilitate spread of these complex contagions. Here we show that minor modifications to this model, which make it more realistic, reverse this result, thereby harmonizing qualitative facts about how network structure affects contagion. To model the trade-off between long and short edges we…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Game Theory and Applications
