Asymptotic behaviours of a class of threshold models for collective action in social networks

IF 1.6 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
A. Garulli, Antonio Giannitrapani
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引用次数: 1

Abstract

ABSTRACT A class of dynamic threshold models is proposed for describing the upset of collective actions in social networks. The agents of the network have to decide whether to undertake certain action or not. They make their decision by comparing the activity level of their neighbours with a time-varying threshold, evolving according to a time-invariant opinion dynamic model. Key features of the model are a parameter representing the degree of self-confidence of the agents and the mechanism adopted by the agents to evaluate the activity level of their neighbours. The case in which a radical agent, initially eager to undertake the action, interacts with a group of ordinary agents, is considered. The main contribution of the paper is the complete characterisation of the asymptotic behaviours of the network, for three different graph topologies. The asymptotic activity patterns are determined as a function of the self-confidence parameter and of the initial threshold of the ordinary agents. Numerical validation on a real ego network shows that the theoretical results obtained for simple graph structures provide useful insights on the network behaviour in more complex settings.
社会网络中集体行为的一类阈值模型的渐近行为
提出了一类动态阈值模型来描述社会网络中集体行为的扰动。网络中的代理必须决定是否采取某种行动。它们通过将邻居的活动水平与时变阈值进行比较,根据时变意见动态模型进行演化,从而做出决策。该模型的关键特征是代表智能体自信程度的参数和智能体评估其邻居活动水平的机制。在这种情况下,一个激进的代理人,最初急于采取行动,与一组普通代理人相互作用,被考虑。本文的主要贡献是对三种不同图拓扑的网络的渐近行为的完整描述。渐近活动模式被确定为自信参数和普通智能体初始阈值的函数。在实际自我网络上的数值验证表明,对简单图结构获得的理论结果为更复杂设置下的网络行为提供了有用的见解。
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来源期刊
International Journal of Control
International Journal of Control 工程技术-自动化与控制系统
CiteScore
5.00
自引率
9.50%
发文量
197
审稿时长
5.3 months
期刊介绍: The International Journal of Control publishes top quality, peer reviewed papers in all areas, both established and emerging, of control theory and its applications. Readership: Development engineers and research workers in industrial automatic control. Research workers and students in automatic control and systems science in universities. Teachers of advanced automatic control in universities. Applied mathematicians and physicists working in automatic control and systems analysis. Development and research workers in fields where automatic control is widely applied: process industries, energy utility industries and advanced manufacturing, embedded systems and robotics.
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