Füllsack Manfred, Reisinger Daniel, Kapeller Marie, Jäger Georg
Institute of Systems Sciences, Innovation and Sustainability Research at the University of Graz, Graz, Austria.
J Comput Soc Sci. 2022;5(1):665-685. doi: 10.1007/s42001-021-00142-8. Epub 2021 Sep 15.
Studies on the possibility of predicting critical transitions with statistical methods known as early warning signals (EWS) are often conducted on data generated with equation-based models (EBMs). These models base on difference or differential equations, which aggregate a system's components in a mathematical term and therefore do not allow for a detailed analysis of interactions on micro-level. As an alternative, we suggest a simple, but highly flexible agent-based model (ABM), which, when applying EWS-analysis, gives reason to (a) consider social interaction, in particular negative feedback effects, as an essential trigger of critical transitions, and (b) to differentiate social interactions, for example in network representations, into a core and a periphery of agents and focus attention on the periphery. Results are tested against time series from a networked version of the Ising-model, which is often used as example for generating hysteretic critical transitions.
关于使用被称为早期预警信号(EWS)的统计方法预测关键转变可能性的研究,通常是在基于方程的模型(EBM)生成的数据上进行的。这些模型基于差分方程或微分方程,它们用一个数学术语汇总系统的组件,因此不允许对微观层面的相互作用进行详细分析。作为一种替代方法,我们提出一种简单但高度灵活的基于主体的模型(ABM),当应用EWS分析时,它有理由(a)将社会互动,特别是负反馈效应,视为关键转变的一个重要触发因素,以及(b)在网络表示中将社会互动区分为主体的核心和外围,并将注意力集中在外围。结果与伊辛模型网络版本的时间序列进行了对比测试,伊辛模型常被用作生成滞后性关键转变的示例。