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首页> 外文期刊>Frontiers in Psychology >Modeling Multi-Agent Self-Organization through the Lens of Higher Order Attractor Dynamics
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Modeling Multi-Agent Self-Organization through the Lens of Higher Order Attractor Dynamics

机译:通过高阶吸引子动力学的镜头对多主体自组织建模

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Social interaction occurs across many time scales and varying numbers of agents; from one-on-one to large-scale coordination in organizations, crowds, cities, and colonies. These contexts, are characterized by emergent self-organization that implies higher order coordinated patterns occurring over time that are not due to the actions of any particular agents, but rather due to the collective ordering that occurs from the interactions of the agents. Extant research to understand these social coordination dynamics (SCD) has primarily examined dyadic contexts performing rhythmic tasks. To advance this area of study, we elaborate on attractor dynamics, our ability to depict them visually, and quantitatively model them. Primarily, we combine difference/differential equation modeling with mixture modeling as a way to infer the underlying topological features of the data, which can be described in terms of attractor dynamic patterns. The advantage of this approach is that we are able to quantify the self-organized dynamics that agents exhibit, link these dynamics back to activity from individual agents, and relate it to other variables central to understanding the coordinative functionality of a system's behavior. We present four examples that differ in the number of variables used to depict the attractor dynamics (1, 2, and 6) and range from simulated to non-simulated data sources. We demonstrate that this is a flexible method that advances scientific study of SCD in a variety of multi-agent systems.
机译:社交互动发生在许多时间尺度和不同数量的代理人之间。从一对一到大规模的组织,人群,城市和殖民地协调。这些上下文的特征是出现了自组织,这意味着随着时间的推移出现了更高阶的协调模式,这不是由于任何特定代理的行为,而是由于代理交互产生的集体排序。理解这些社会协调动态(SCD)的现有研究主要研究了执行节奏性任务的二元环境。为了推进这一领域的研究,我们详细介绍了吸引子动力学,以视觉方式描绘吸引子并对其进行定量建模的能力。首先,我们将差分/微分方程建模与混合建模相结合,以此来推断数据的潜在拓扑特征,这可以用吸引子动态模式来描述。这种方法的优势在于,我们能够量化代理展示的自组织动态,将这些动态链接到单个代理的活动,并将其与其他变量相关,这些变量对于理解系统行为的协调功能至关重要。我们提供了四个示例,这些示例在用于描述吸引子动力学的变量数量(1、2和6)上有所不同,范围从模拟数据源到非模拟数据源。我们证明这是一种灵活的方法,可以促进在多种多代理系统中进行SCD的科学研究。

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