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Inferring animal social networks and leadership: applications for passive monitoring arrays

机译:推断动物社交网络和领导力:被动监控阵列的应用

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摘要

Analyses of animal social networks have frequently benefited from techniques derived from other disciplines. Recently, machine learning algorithms have been adopted to infer social associations from time-series data gathered using remote, telemetry systems situated at provisioning sites. We adapt and modify existing inference methods to reveal the underlying social structure of wide-ranging marine predators moving through spatial arrays of passive acoustic receivers. From six months of tracking data for grey reef sharks (Carcharhinus amblyrhynchos) at Palmyra atoll in the Pacific Ocean, we demonstrate that some individuals emerge as leaders within the population and that this behavioural coordination is predicted by both sex and the duration of co-occurrences between conspecifics. In doing so, we provide the first evidence of long-term, spatially extensive social processes in wild sharks. To achieve these results, we interrogate simulated and real tracking data with the explicit purpose of drawing attention to the key considerations in the use and interpretation of inference methods and their impact on resultant social structure. We provide a modified translation of the GMMEvents method for R, including new analyses quantifying the directionality and duration of social events with the aim of encouraging the careful use of these methods more widely in less tractable social animal systems but where passive telemetry is already widespread.
机译:动物社交网络的分析通常受益于其他学科的技术。最近,已经采用了机器学习算法来从使用位于供应站点的远程遥测系统收集的时间序列数据推断社会关联。我们调整和修改现有的推论方法,以揭示通过无源声学接收器的空间阵列移动的各种海洋捕食者的潜在社会结构。从太平洋帕尔米拉环礁的灰礁鲨(Carcharhinus amblyrhynchos)六个月的跟踪数据中,我们证明了某些人在种群中脱颖而出,并且这种行为协调是通过性别和共存持续时间来预测的在具体之间。在此过程中,我们提供了野生鲨鱼长期,空间广泛的社会进程的第一个证据。为了获得这些结果,我们询问模拟的和真实的跟踪数据,其明确目的是吸引人们注意推理方法的使用和解释中的关键考虑因素及其对最终社会结构的影响。我们为R提供了GMMEvents方法的修改版本,包括量化社交事件的方向性和持续时间的新分析,目的是鼓励人们在较不易处理的社交动物系统中广泛使用这些方法,而被动遥测已经很普遍了。

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