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. 2022 Aug 17;24(8):1140.
doi: 10.3390/e24081140.

Contrarian Voter Model under the Influence of an Oscillating Propaganda: Consensus, Bimodal Behavior and Stochastic Resonance

Affiliations

Contrarian Voter Model under the Influence of an Oscillating Propaganda: Consensus, Bimodal Behavior and Stochastic Resonance

Maria Cecilia Gimenez et al. Entropy (Basel). .

Abstract

We study the contrarian voter model for opinion formation in a society under the influence of an external oscillating propaganda and stochastic noise. Each agent of the population can hold one of two possible opinions on a given issue—against or in favor—and interacts with its neighbors following either an imitation dynamics (voter behavior) or an anti-alignment dynamics (contrarian behavior): each agent adopts the opinion of a random neighbor with a time-dependent probability p(t), or takes the opposite opinion with probability 1−p(t). The imitation probability p(t) is controlled by the social temperature T, and varies in time according to a periodic field that mimics the influence of an external propaganda, so that a voter is more prone to adopt an opinion aligned with the field. We simulate the model in complete graph and in lattices, and find that the system exhibits a rich variety of behaviors as T is varied: opinion consensus for T=0, a bimodal behavior for T<Tc, an oscillatory behavior where the mean opinion oscillates in time with the field for T>Tc, and full disorder for T≫1. The transition temperature Tc vanishes with the population size N as Tc≃2/lnN in complete graph. In addition, the distribution of residence times tr in the bimodal phase decays approximately as tr−3/2. Within the oscillatory regime, we find a stochastic resonance-like phenomenon at a given temperature T*. Furthermore, mean-field analytical results show that the opinion oscillations reach a maximum amplitude at an intermediate temperature, and that exhibit a lag with respect to the field that decreases with T.

Keywords: noise; opinion dynamics; periodic field; stochastic resonance; voter model.

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Conflict of interest statement

The authors declare no conflict of interest.

Figures

Figure 1
Figure 1
(a) Time evolution of the magnetization m in a single realization of the dynamics for a system of N=1000 agents on a complete graph, subject to a periodic field H(t)=H0sin(ωt) of amplitude H0=0.1 and period τ=512 (ω=2π/τ), and an external noise associated to a temperature T. Each curve corresponds to a different temperature, as indicated in the legend. Four behaviors are observed: 1 consensus for T=0, bimodal behavior for T=0.25<Tc, oscillations for T=1.0>Tc, and full disorder for T=1001. Here, Tc0.2895 is the transition temperature. The field H(t) is also plotted for reference. (b) Evolution of m in a single realization for the same parameters as in panel (a), on a 1D-lattice of N=8192 sites (top-left), a 2D square lattice of size N=64×64 (top-right), a 2D triangular lattice of size N=64×64 (bottom-left), and a 2D hexagonal lattice of size N=64×64 (bottom-right).
Figure 2
Figure 2
(a) Histogram of m for the same system and parameters as those in Figure 1, and for the temperatures indicated in the legends. At the transition point Tc0.2895, the distribution P(m) is uniform (top-right). (b) Normalized histograms of the residence time tr for the same system and parameters of panel. (a) Each plot corresponds to a different temperature T, as indicated in the legends. The bottom-right plot is in linear-log scale, while the other plots are in double logarithmic scale. The dashed line in the top-left plot has slope 3/2. Each histogram was obtained by running a single realization up to a time 108.
Figure 3
Figure 3
Signal-to-noise ratio SNR vs. temperature T on the five interaction topologies indicated in the legend. The system sizes are N=1024 for the 1D lattice and CG, and N=32×32 for the 2D lattices (hexagonal, square and triangular). The amplitude of the external field is H0=0.1. Each panel corresponds to a different period τ=128, 256, 512 and 1024.
Figure 4
Figure 4
Top panels: signal-to-noise ratio SNR as a function of the amplitude of the external field H0, for temperatures T=0.2,0.3,0.5,1.3 and 2.3. Bottom panels: SNR vs. T for H0=0.6,0.7,0.8,0.9 and 1.0. The period of the field is τ=128. Left, central and right panels correspond to simulations on a complete graph (CG) of N=1024 nodes, a 2D square lattice of N=32×32 sites and a 1D lattice of N=1024 sites, respectively.
Figure 5
Figure 5
Total response R vs. field amplitude H0, for the topologies indicated in the legend. The period of the field is τ=128, and the system sizes are N=1024 for CG and 1D lattice, and N=32×32 for 2D lattices. Inset: R vs. H0 on a log-log scale. The dashed line has slope 2.
Figure 6
Figure 6
(a) Time evolution of the average magnetization m for temperatures T=0.2 (squares), T=0.5 (circles), T=1.0 (diamonds), T=2.0 (up triangles) and T=5.0 (down triangles), on a CG of size N=100, with a field of amplitude H0=0.1 and period τ=512. The average was done over 105 independent realizations of the dynamics. Solid lines are the analytical approximation from Equation (8). (b) Lag L respect to the period τ vs. temperature T for field periods τ=256 (squares), τ=512 (circles) and τ=1024 (diamonds), and amplitude H0=0.1, for the same topology of panel (a). Solid lines are the approximation from Equation (15). Inset: Amplitude A vs. T for the same parameter values as in the main panel. Solid lines are the analytical approximation from Equation (13).
Figure 7
Figure 7
(a) Time evolution of the average magnetization m over 105 realizations of the dynamics on a CG of size N=100, with temperature T=0.5, under a field of period τ=512 and amplitudes H0=0.02 (squares), H0=0.1 (circles) and H0=0.5 (diamonds). The solid pink line corresponds to the numerical integration of Equations (A1) and (A2), while the other solid lines are the analytical approximation from Equation (8). (b) Normalized lag L/τ vs. temperature T for a field of period τ=512 and amplitudes H0 indicated in the legend. The solid line is the approximation from Equation (15). Inset: A vs. T for the same parameter values as in the main panel. Solid lines are the approximation from Equation (13).

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