Taking into Account the Variations of Neighbourhood Sizes in the Mean-Field Approximation of the Threshold Model on a Random Network
Authored by Sylvie Huet, Guillaume Deffuant, Margaret Edwards
Date Published: 2007
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Abstract
We compare the individual-based ``threshold model{''} of innovation
diffusion in the version which has been studied by Young (1998), with an
aggregate model we derived from it. This model allows us to formalise
and test hypotheses on the influence of individual characteristics upon
global evolution. The classical threshold model supposes that an
individual adopts a behaviour according to a trade-off between a social
pressure and a personal interest. Our study considers only the case
where all have the same threshold. We present an aggregated model, which
takes into account variations of the neighbourhood sizes, whereas
previous work assumed this size fixed (Edwards et al. 2003a). The
comparison between the aggregated models (the first one assuming a
neighbourhood size and the second one, a variable one) points out an
improvement of the approximation in most of the value of parameter
space. This proves that the average degree of connectivity (first
aggregated model) is not sufficient for characterising the evolution, and that the node degree variability has an impact on the diffusion
dynamics. Remaining differences between both models give us some clues
about the specific ability of individual-based model to maintain a
minority behaviour which becomes a majority by an addition of stochastic
effects.
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