Abstract

Models of social diffusion reflect processes of how new products, ideas or behaviors are adopted in a population. These models typically lead to a continuous or a discontinuous phase transition of the number of adopters as a function of a control parameter. We explore a simple model of social adoption where the agents can be in two states, either adopters or non-adopters, and can switch between these two states interacting with other agents through a network. The probability of an agent to switch from non-adopter to adopter depends on the number of adopters in her network neighborhood, the adoption threshold $T$ and the adoption coefficient $a$, two parameters defining a Hill function. In contrast, the transition from adopter to non-adopter is spontaneous at a certain rate $\mu$. In a mean-field approach, we derive the governing ordinary differential equations and show that the nature of the transition between the global non-adoption and global adoption regimes depends mostly on the balance between the probability to adopt with one and two adopters. The transition changes from continuous, via a transcritical bifurcation, to discontinuous, via a combination of a saddle-node and a transcritical bifurcation, through a supercritical pitchfork bifurcation. We characterize the full parameter space. Finally, we compare our analytical results with Montecarlo simulations on annealed and quenched degree regular networks, showing a better agreement for the annealed case. Our results show how a simple model is able to capture two seemingly very different types of transitions, i.e., continuous and discontinuous and thus unifies underlying dynamics for different systems. Furthermore the form of the adoption probability used here is based on empirical measurements.

Highlights

  • Spreading processes are ubiquitous in nature: the contagion of diseases [1], herd behavior in animals [2], the diffusion of innovations [3], rumor spreading [4], the evolution of social movements [5], the propagation of hashtags in Twitter [6], etc

  • We have analyzed a model of social contagion (SIS-like) on degree regular random networks with an adoption probability measured in empirical data in Gallup et al [20] that interpolates between the cases of epidemic-like spreading and thresholdlike dynamics

  • We show that this simple model displays both continuous and discontinuous transitions from a disease-free state to an endemic state

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Summary

Introduction

Spreading processes are ubiquitous in nature: the contagion of diseases [1], herd behavior in animals [2], the diffusion of innovations [3], rumor spreading [4], the evolution of social movements [5], the propagation of hashtags in Twitter [6], etc. We will show that the shape of the adoption probability leads to two different behaviors depending on the parameter values: either a continuous or a discontinuous phase transition.

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