When the interactions of agents on a network are assumed to follow the Deffuant opinion dynamics model, the
outcomes are known to depend on the structure of the underlying network. This behavior cannot be captured by
existing mean-field approximations for the Deffuant model. In this paper, a generalized mean-field approximation
is derived that accounts for the effects of network topology on Deffuant dynamics through the degree distribution
or community structure of the network. The accuracy of the approximation is examined by comparison with
large-scale Monte Carlo simulations on both synthetic and real-world networks.
Funding
Using the Cloud to Streamline the Development of Mobile Phone Apps
Dynamics of the metabolic state in the context of a systematic approach to the study of the processes of growth and development of higher plants and fungi
Development of theoretical and experimental criteria for predicting the wear resistance of austenitic steels and nanostructured coatings based on a hard alloy under conditions of erosion-corrosion wear