Department of Mechanical Engineering, University of Colorado, Boulder, CO, USA.
Department of Biology, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Sci Rep. 2018 Jul 9;8(1):10338. doi: 10.1038/s41598-018-28285-1.
Leader-follower relationships are commonly hypothesized as a fundamental mechanism underlying collective behaviour in many biological and physical systems. Understanding the emergence of such behaviour is relevant in science and engineering to control the dynamics of complex systems toward a desired state. In prior works, due in part to the limitations of existing methods for dissecting intermittent causal relationships, leadership is assumed to be consistent in time and space. This assumption has been contradicted by recent progress in the study of animal behaviour. In this work, we leverage information theory and time series analysis to propose a novel and simple method for dissecting changes in causal influence. Our approach computes the cumulative influence function of a given individual on the rest of the group in consecutive time intervals and identify change in the monotonicity of the function as a change in its leadership status. We demonstrate the effectiveness of our approach to dissect potential changes in leadership on self-propelled particles where the emergence of leader-follower relationship can be controlled and on tandem flights of birds recorded in their natural environment. Our method is expected to provide a novel methodological tool to further our understanding of collective behaviour.
领导-跟随关系通常被假设为许多生物和物理系统中集体行为的基本机制。了解这种行为的出现对于科学和工程学来说是相关的,因为可以通过控制复杂系统的动态来实现期望的状态。在之前的研究中,由于现有方法在剖析间歇性因果关系方面的局限性,领导者在时间和空间上被认为是一致的。这一假设最近在动物行为研究中得到了反驳。在这项工作中,我们利用信息理论和时间序列分析,提出了一种新颖而简单的方法来剖析因果影响的变化。我们的方法计算了给定个体在连续时间间隔内对群体其余部分的累积影响函数,并将函数单调性的变化识别为其领导地位的变化。我们展示了我们的方法在自推进粒子上剖析潜在领导变化的有效性,在这些粒子中可以控制领导-跟随关系的出现,并且在自然环境中记录的鸟类的串联飞行中也可以有效。我们的方法有望为进一步理解集体行为提供一种新的方法工具。