Juan Paz, Camilo Rocha, Luis Tobòn, Frank Valencia
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Consensus in Models for Opinion Dynamics with Generalized-Bias
Interest is growing in social learning models where users share opinions and
adjust their beliefs in response to others. This paper introduces
generalized-bias opinion models, an extension of the DeGroot model, that
captures a broader range of cognitive biases. These models can capture, among
others, dynamic (changing) influences as well as ingroup favoritism and
out-group hostility, a bias where agents may react differently to opinions from
members of their own group compared to those from outside. The reactions are
formalized as arbitrary functions that depend, not only on opinion difference,
but also on the particular opinions of the individuals interacting. Under
certain reasonable conditions, all agents (despite their biases) will converge
to a consensus if the influence graph is strongly connected, as in the original
DeGroot model. The proposed approach combines different biases, providing
deeper insights into the mechanics of opinion dynamics and influence within
social networks.