A protocol for assessing bias and robustness of social network metrics using GPS based radio-telemetry data.

IF 3.4 1区 生物学 Q2 ECOLOGY
Prabhleen Kaur, Simone Ciuti, Federico Ossi, Francesca Cagnacci, Nicolas Morellet, Anne Loison, Kamal Atmeh, Philip McLoughlin, Adele K Reinking, Jeffrey L Beck, Anna C Ortega, Matthew Kauffman, Mark S Boyce, Amy Haigh, Anna David, Laura L Griffin, Kimberly Conteddu, Jane Faull, Michael Salter-Townshend
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引用次数: 0

Abstract

Background: Social network analysis of animal societies allows scientists to test hypotheses about social evolution, behaviour, and dynamic processes. However, the accuracy of estimated metrics depends on data characteristics like sample proportion, sample size, and frequency. A protocol is needed to assess for bias and robustness of social network metrics estimated for the animal populations especially when a limited number of individuals are monitored.

Methods: We used GPS telemetry datasets of five ungulate species to combine known social network approaches with novel ones into a comprehensive five-step protocol. To quantify the bias and uncertainty in the network metrics obtained from a partial population, we presented novel statistical methods which are particularly suited for autocorrelated data, such as telemetry relocations. The protocol was validated using a sixth species, the fallow deer, with a known population size where 85 % of the individuals have been directly monitored.

Results: Through the protocol, we demonstrated how pre-network data permutations allow researchers to assess non-random aspects of interactions within a population. The protocol assesses bias in global network metrics, obtains confidence intervals, and quantifies uncertainty of global and node-level network metrics based on the number of nodes in the network. We found that global network metrics like density remained robust even with a lowered sample size, while local network metrics like eigenvector centrality were unreliable for four of the species. The fallow deer network showed low uncertainty and bias even at lower sampling proportions, indicating the importance of a thoroughly sampled population while demonstrating the accuracy of our evaluation methods for smaller samples.

Conclusions: The protocol allows researchers to analyse GPS-based radio-telemetry or other data to determine the reliability of social network metrics. The estimates enable the statistical comparison of networks under different conditions, such as analysing daily and seasonal changes in the density of a network. The methods can also guide methodological decisions in animal social network research, such as sampling design and allow more accurate ecological inferences from the available data. The R package aniSNA enables researchers to implement this workflow on their dataset, generating reliable inferences and guiding methodological decisions.

利用基于 GPS 的无线电遥测数据评估社交网络度量偏差和稳健性的协议。
背景通过对动物社会的社会网络分析,科学家们可以检验有关社会进化、行为和动态过程的假设。然而,估计指标的准确性取决于样本比例、样本大小和频率等数据特征。有必要制定一项协议来评估动物种群社会网络指标估计值的偏差和稳健性,尤其是在监测个体数量有限的情况下:方法:我们利用五种有蹄类动物的 GPS 遥测数据集,将已知的社会网络方法与新方法结合起来,形成了一个综合的五步方案。为了量化从部分种群中获得的网络指标的偏差和不确定性,我们提出了新的统计方法,这些方法特别适用于自相关数据,如遥测迁移。我们使用已知种群规模的第六个物种秋鹿对该方案进行了验证,在该种群中,85%的个体已被直接监测到:通过该方案,我们展示了预网络数据排列如何使研究人员能够评估种群内相互作用的非随机方面。该方案可评估全局网络指标的偏差,获得置信区间,并根据网络中的节点数量量化全局和节点级网络指标的不确定性。我们发现,即使样本数量减少,密度等全局网络指标仍然保持稳健,而特征向量中心性等局部网络指标对其中四个物种来说并不可靠。即使采样比例较低,野鹿网络也显示出较低的不确定性和偏差,这表明了对种群进行全面采样的重要性,同时也证明了我们的评估方法对较小样本的准确性:该方案使研究人员能够分析基于 GPS 的无线电遥测数据或其他数据,以确定社会网络指标的可靠性。通过估算,可以对不同条件下的网络进行统计比较,例如分析网络密度的日变化和季节变化。这些方法还能指导动物社会网络研究中的方法决策,如取样设计,并能从现有数据中得出更准确的生态推论。R 软件包 aniSNA 使研究人员能够在其数据集上实施这一工作流程,生成可靠的推论并指导方法决策。
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来源期刊
Movement Ecology
Movement Ecology Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
6.60
自引率
4.90%
发文量
47
审稿时长
23 weeks
期刊介绍: Movement Ecology is an open-access interdisciplinary journal publishing novel insights from empirical and theoretical approaches into the ecology of movement of the whole organism - either animals, plants or microorganisms - as the central theme. We welcome manuscripts on any taxa and any movement phenomena (e.g. foraging, dispersal and seasonal migration) addressing important research questions on the patterns, mechanisms, causes and consequences of organismal movement. Manuscripts will be rigorously peer-reviewed to ensure novelty and high quality.
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