Consensus in Models for Opinion Dynamics with Generalized-Bias

Juan Paz, Camilo Rocha, Luis Tobòn, Frank Valencia
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Abstract

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.
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带有普遍偏见的舆论动态模型中的共识
人们对社会学习模型的兴趣与日俱增,在这种模型中,用户分享观点并根据他人的观点调整自己的信念。本文介绍了广义偏差舆论模型,它是 DeGroot 模型的延伸,能捕捉到更广泛的认知偏差。这些模型可以捕捉动态(不断变化的)影响因素以及群体内偏好和群体外敌意(一种偏差),在这种偏差中,行为主体可能会对来自本群体成员和来自外部成员的意见做出不同的反应。这些反应被公式化为任意函数,不仅取决于意见差异,还取决于互动个体的特定意见。在某些合理的条件下,如果影响图是强连接的,那么所有参与者(尽管存在偏差)都会达成共识,就像最初的德哥罗特模型一样。所提出的方法结合了不同的偏见,为社会网络中的意见动态和影响机制提供了更深入的见解。
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