Hofmann David D, Cozzi Gabriele, Fieberg John
Department of Evolutionary Biology and Environmental Studies, University of Zurich, Winterthurerstrasse 190, 8057, Zurich, Switzerland.
Botswana Predator Conservation Program, Wild Entrust, Private Bag 13, Maun, Botswana.
Mov Ecol. 2024 May 9;12(1):37. doi: 10.1186/s40462-024-00476-8.
Integrated step-selection analyses (iSSAs) are versatile and powerful frameworks for studying habitat and movement preferences of tracked animals. iSSAs utilize integrated step-selection functions (iSSFs) to model movements in discrete time, and thus, require animal location data that are regularly spaced in time. However, many real-world datasets are incomplete due to tracking devices failing to locate an individual at one or more scheduled times, leading to slight irregularities in the duration between consecutive animal locations. To address this issue, researchers typically only consider bursts of regular data (i.e., sequences of locations that are equally spaced in time), thereby reducing the number of observations used to model movement and habitat selection. We reassess this practice and explore four alternative approaches that account for temporal irregularity resulting from missing data. Using a simulation study, we compare these alternatives to a baseline approach where temporal irregularity is ignored and demonstrate the potential improvements in model performance that can be gained by leveraging these additional data. We also showcase these benefits using a case study on a spotted hyena (Crocuta crocuta).
综合步长选择分析(iSSA)是用于研究被追踪动物的栖息地和运动偏好的通用且强大的框架。iSSA利用综合步长选择函数(iSSF)对离散时间内的运动进行建模,因此需要时间上定期间隔的动物位置数据。然而,由于追踪设备未能在一个或多个预定时间定位到个体,许多现实世界的数据集是不完整的,这导致连续动物位置之间的持续时间存在轻微不规则性。为了解决这个问题,研究人员通常只考虑规则数据的片段(即时间上等距的位置序列),从而减少了用于建模运动和栖息地选择的观测数量。我们重新评估这种做法,并探索四种替代方法,这些方法考虑了缺失数据导致的时间不规则性。通过模拟研究,我们将这些替代方法与忽略时间不规则性的基线方法进行比较,并展示通过利用这些额外数据可以在模型性能上获得的潜在改进。我们还通过对一只斑鬣狗(斑点鬣狗)的案例研究展示了这些好处。