Franceschi J, Pareschi L, Zanella M
Department of Mathematics "F. Casorati", University of Pavia, Pavia, Italy.
Department of Mathematics and Computer Science, University of Ferrara, Ferrara, Italy.
SN Partial Differ Equ Appl. 2022;3(6):68. doi: 10.1007/s42985-022-00194-z. Epub 2022 Oct 3.
Fake news spreading, with the aim of manipulating individuals' perceptions of facts, is now recognized as a major problem in many democratic societies. Yet, to date, little has been understood about how fake news spreads on social networks, what the influence of the education level of individuals is, when fake news is effective in influencing public opinion, and what interventions might be successful in mitigating their effect. In this paper, starting from the recently introduced kinetic multi-agent model with competence by the first two authors, we propose to derive reduced-order models through the notion of social closure in the mean-field approximation that has its roots in the classical hydrodynamic closure of kinetic theory. This approach allows to obtain simplified models in which the competence and learning of the agents maintain their role in the dynamics and, at the same time, the structure of such models is more suitable to be interfaced with data-driven applications. Examples of different Twitter-based test cases are described and discussed.
虚假新闻的传播旨在操纵个人对事实的认知,如今已被公认为许多民主社会中的一个重大问题。然而,迄今为止,对于虚假新闻如何在社交网络上传播、个人教育水平的影响是什么、虚假新闻何时能有效影响公众舆论,以及哪些干预措施可能成功减轻其影响,人们了解得还很少。在本文中,从前两位作者最近引入的具有能力的动力学多智能体模型出发,我们建议通过平均场近似中的社会封闭概念来推导降阶模型,该概念源于动力学理论的经典流体动力学封闭。这种方法能够获得简化模型,其中智能体的能力和学习在动力学中保持其作用,同时,此类模型的结构更适合与数据驱动的应用相结合。文中描述并讨论了基于推特的不同测试案例。