Tavares Sara B, Whitehead Hal, Doniol-Valcroze Thomas
Cetacean Research Program, Pacific Biological Station, Fisheries and Oceans Canada, Nanaimo, Canada.
Department of Biology, Dalhousie University, Halifax, Canada.
Mamm Biol. 2022;102(3):551-566. doi: 10.1007/s42991-022-00231-9. Epub 2022 Mar 25.
Our interpretation of animal social structures is inherently dependent on our ability to define association criteria that are biologically meaningful. However, association thresholds are often based upon generalized preconceptions of a species' social behaviour, and the impact of using these arbitrary definitions has been largely overlooked. In this study we suggest a probability-based method for defining association thresholds using lagged identification rates on photographic records of identifiable individuals. This technique uses a simple model of emigration/immigration from photographable clusters to identify the time-dependent lag value between identifications of two individuals that corresponds to approximately 75% probability of being in close spatial proximity and likely associating. This lag value is then used as the threshold to define associations for social analyses. We applied the technique to a dataset of northern resident killer whales () in the Northeast Pacific and tested its performance against two arbitrary thresholds. The probabilistic association maximized the variation in association strengths at different levels of the social structure, in line with known social patterns in this population. Furthermore, variability in inferred social structure metrics generated by different association criteria highlighted the consequential effect of choosing arbitrary thresholds. Data-driven association thresholds are a promising approach to study populations without the need to subjectively define associations in the field, especially in societies with prominent fission-fusion dynamics. This method is applicable to any dataset of sequential identifications where it can be assumed that associated individuals will tend to be identified in close proximity.
The online version contains supplementary material available at 10.1007/s42991-022-00231-9.
我们对动物社会结构的解读本质上取决于我们定义具有生物学意义的关联标准的能力。然而,关联阈值往往基于对物种社会行为的普遍先入之见,而使用这些任意定义的影响在很大程度上被忽视了。在本研究中,我们提出了一种基于概率的方法,用于使用可识别个体的照片记录上的滞后识别率来定义关联阈值。该技术使用一个从可拍摄集群中迁出/迁入的简单模型,以识别两个个体识别之间的时间依赖性滞后值,该值对应于在紧密空间接近且可能关联的概率约为75%。然后,这个滞后值被用作阈值来定义用于社会分析的关联。我们将该技术应用于东北太平洋北部居留虎鲸()的数据集,并针对两个任意阈值测试了其性能。概率关联在社会结构的不同层面上最大化了关联强度的变化,这与该种群已知的社会模式一致。此外,不同关联标准产生的推断社会结构指标的变异性突出了选择任意阈值的后果性影响。数据驱动的关联阈值是一种很有前景的方法,无需在实地主观定义关联即可研究种群,特别是在具有显著裂变融合动态的社会中。该方法适用于任何连续识别的数据集,前提是可以假设相关个体往往会在近距离被识别。
在线版本包含可在10.1007/s42991-022-00231-9获取的补充材料。