Diffusion on assortative networks: from mean-field to agent-based, via Newman rewiring
L. Di Lucchio, G. Modanese

TL;DR
This paper explores the transition from mean-field to agent-based models of epidemic diffusion on networks, using network rewiring techniques to incorporate degree correlations and compare results.
Contribution
It introduces methods for constructing and rewiring networks with specific degree correlations, bridging mean-field and agent-based diffusion models.
Findings
Comparison of HMF approximation with real network simulations.
Effect of degree correlations on diffusion dynamics.
Validation of network rewiring methods for targeted correlations.
Abstract
In mathematical models of epidemic diffusion on networks based upon systems of differential equations, it is convenient to use the Heterogeneous Mean Field approximation (HMF) because it allows to write one single equation for all nodes of a certain degree , each one virtually present with a probability given by the degree distribution . The two-point correlations between nodes are defined by the matrix , which can typically be uncorrelated, assortative or disassortative. After a brief review of this approach and of the results obtained within this approximation for the Bass diffusion model, in this work we look at the transition from the HMF approximation to the description of diffusion through the dynamics of single nodes, first still with differential equations, and then with agent-based models. For this purpose, one needs a method for the explicit construction of…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence
