Opinion dynamics with disagreement and modulated information
Alina S\^irbu, Vittorio Loreto, Vito D.P. Servedio, Francesca Tria

TL;DR
This paper introduces a new continuous vector opinion model incorporating explicit disagreement and external information, revealing how message intensity and initial conditions influence opinion clustering and segregation.
Contribution
It presents a novel opinion dynamics model that explicitly includes disagreement modulated by opinion overlap and external information effects, extending prior models.
Findings
Extreme information causes opinion segregation with limited influence.
Milder messages promote consensus and cohesion.
Initial opinion similarity determines cluster formation and transition points.
Abstract
Opinion dynamics concerns social processes through which populations or groups of individuals agree or disagree on specific issues. As such, modelling opinion dynamics represents an important research area that has been progressively acquiring relevance in many different domains. Existing approaches have mostly represented opinions through discrete binary or continuous variables by exploring a whole panoply of cases: e.g. independence, noise, external effects, multiple issues. In most of these cases the crucial ingredient is an attractive dynamics through which similar or similar enough agents get closer. Only rarely the possibility of explicit disagreement has been taken into account (i.e., the possibility for a repulsive interaction among individuals' opinions), and mostly for discrete or 1-dimensional opinions, through the introduction of additional model parameters. Here we…
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