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We propose a continuous-time multi-option nonlinear generalization of linear weighted-average opinion dynamics. Nonlinearity is introduced saturating opinion exchanges, and this is enough to enable a significantly range of opinion-forming behaviors with our model as compared to linear and nonlinear models. For a group of agents that communicate over a network, these behaviors include multistable agreement and, tunable sensitivity to input, robustness to disturbance, flexible between patterns of opinions, and opinion cascades. We derive-dependent tuning rules to robustly control the system behavior and we state-feedback dynamics for the model parameters to make the behavior to changing external conditions. } The model provides new means for study of dynamics on natural and engineered networks, from spread and political polarization to collective decision making and task allocation.
Bizyaeva et al. (Wed,) studied this question.
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