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Validation of an automated data collection method for quantifying social networks in collective behaviours

机译:用于量化集体行为中社交网络的自动数据收集方法的验证

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摘要

The social network of preferences among group members can affect the distribution and consequences of collective behaviours. However, the behavioural contexts and taxa in which social network structure has been described are still limited because such studies require extensive data. Here, we highlight the use of an automated passive integrated transponder (PIT)-tag monitoring system for social network analyses and do so in a novel context-nestling provisioning in an avian cooperative breeder, for which direct observation of social behaviours is difficult. First, we used observers and cameras to arrive at a suitable metric of nest visit synchrony in the PIT-tag data. Second, we validated the use of this metric for social network analyses using internal nest video cameras. Third, we used hierarchical regression models with 'sociality' parameter to investigate structure of networks collected from multiple groups. Use of PIT tags led to nest visitation duration and frequency being obtained with a high degree of accuracy for all group members, except for the breeding female for whom accurate estimations required the use of a video camera due to her high variability in visitation time. The PIT-tag dataset uncovered significant variability in social network structure. Our results highlight the importance of combining complementary observation methods when conducting social network analyses of wild animals. Our methods can also be generalised to multiple contexts in social systems wherever repeated encounters with other individuals in closed space have ecological implications
机译:团体成员之间的偏好社交网络会影响集体行为的分布和后果。但是,描述社交网络结构的行为背景和分类单位仍然有限,因为此类研究需要大量数据。在这里,我们重点介绍了使用自动无源集成应答器(PIT)标签监控系统进行社交网络分析,并在禽类合作育种者的新型情境嵌套配置中进行了此操作,因此很难直接观察社交行为。首先,我们使用观察者和摄像机在PIT标签数据中得出合适的嵌套访问同步度量。其次,我们验证了此度量标准在使用内部嵌套摄像机进行社交网络分析中的使用。第三,我们使用带有“社会性”参数的层次回归模型来调查从多个组收集的网络的结构。使用PIT标签可以使所有组成员以较高的准确度获得巢访视的持续时间和频率,但由于其访视时间的高变异性而需要对其进行精确估计的育种雌鼠除外。 PIT标签数据集发现社交网络结构存在显着变化。我们的结果突出了在进行野生动物的社会网络分析时,结合互补观察方法的重要性。我们的方法还可以推广到社会系统中的多种情况下,而在封闭空间中与其他人的反复接触对生态产生影响

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