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Statistical modelling of individual animal movement: an overview of key methods and a discussion of practical challenges

机译:动物个体运动的统计模型:关键方法概述和实际挑战的讨论

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With the influx of complex and detailed tracking data gathered from electronic tracking devices, the analysis of animal movement data has recently emerged as a cottage industry among biostatisticians. New approaches of ever greater complexity are continue to be added to the literature. In this paper, we review what we believe to be some of the most popular and most useful classes of statistical models used to analyse individual animal movement data. Specifically, we consider discrete-time hidden Markov models, more general state-space models and diffusion processes. We argue that these models should be core components in the toolbox for quantitative researchers working on stochastic modelling of individual animal movement. The paper concludes by offering some general observations on the direction of statistical analysis of animal movement. There is a trend in movement ecology towards what are arguably overly complex modelling approaches which are inaccessible to ecologists, unwieldy with large data sets or not based on mainstream statistical practice. Additionally, some analysis methods developed within the ecological community ignore fundamental properties of movement data, potentially leading to misleading conclusions about animal movement. Corresponding approaches, e.g. based on L,vy walk-type models, continue to be popular despite having been largely discredited. We contend that there is a need for an appropriate balance between the extremes of either being overly complex or being overly simplistic, whereby the discipline relies on models of intermediate complexity that are usable by general ecologists, but grounded in well-developed statistical practice and efficient to fit to large data sets.
机译:随着从电子跟踪设备收集的复杂而详细的跟踪数据的涌入,对动物运动数据的分析近来已成为生物统计学家的家庭手工业。越来越复杂的新方法将继续添加到文献中。在本文中,我们回顾了我们认为是用于分析动物个体运动数据的一些最流行和最有用的统计模型。具体来说,我们考虑离散时间隐马尔可夫模型,更一般的状态空间模型和扩散过程。我们认为,这些模型应该是定量研究人员对动物个体运动进行随机建模的工具箱中的核心组件。本文通过对动物运动的统计分析方向提供一些一般性的意见作为总结。在运动生态学方面,有一种趋势趋向于被认为是过于复杂的建模方法,生态学家无法使用这些建模方法,笨拙的使用大数据集或没有基于主流统计实践。此外,生态界内部开发的某些分析方法忽略了运动数据的基本属性,可能导致有关动物运动的误导性结论。相应的方法,例如基于L,vy步行型模型的产品,尽管在很大程度上已声名狼藉,但仍继续受欢迎。我们认为,在过于复杂或过于简化的极端情况之间需要适当的平衡,从而使该学科依赖于一般生态学家可以使用的中等复杂性模型,但要以发达的统计实践和高效为基础以适合大型数据集。

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