Klappstein N J, Thomas L, Michelot T
School of Mathematics and Statistics, University of St Andrews, St Andrews, UK.
Department of Mathematics and Statistics, Dalhousie University, Halifax, Canada.
Mov Ecol. 2023 Jun 3;11(1):30. doi: 10.1186/s40462-023-00392-3.
There is strong incentive to model behaviour-dependent habitat selection, as this can help delineate critical habitats for important life processes and reduce bias in model parameters. For this purpose, a two-stage modelling approach is often taken: (i) classify behaviours with a hidden Markov model (HMM), and (ii) fit a step selection function (SSF) to each subset of data. However, this approach does not properly account for the uncertainty in behavioural classification, nor does it allow states to depend on habitat selection. An alternative approach is to estimate both state switching and habitat selection in a single, integrated model called an HMM-SSF.
We build on this recent methodological work to make the HMM-SSF approach more efficient and general. We focus on writing the model as an HMM where the observation process is defined by an SSF, such that well-known inferential methods for HMMs can be used directly for parameter estimation and state classification. We extend the model to include covariates on the HMM transition probabilities, allowing for inferences into the temporal and individual-specific drivers of state switching. We demonstrate the method through an illustrative example of plains zebra (Equus quagga), including state estimation, and simulations to estimate a utilisation distribution.
In the zebra analysis, we identified two behavioural states, with clearly distinct patterns of movement and habitat selection ("encamped" and "exploratory"). In particular, although the zebra tended to prefer areas higher in grassland across both behavioural states, this selection was much stronger in the fast, directed exploratory state. We also found a clear diel cycle in behaviour, which indicated that zebras were more likely to be exploring in the morning and encamped in the evening.
This method can be used to analyse behaviour-specific habitat selection in a wide range of species and systems. A large suite of statistical extensions and tools developed for HMMs and SSFs can be applied directly to this integrated model, making it a very versatile framework to jointly learn about animal behaviour, habitat selection, and space use.
对行为依赖型栖息地选择进行建模具有强烈的动机,因为这有助于划定重要生命过程的关键栖息地,并减少模型参数中的偏差。为此,通常采用两阶段建模方法:(i)使用隐马尔可夫模型(HMM)对行为进行分类,以及(ii)对每个数据子集拟合一个步长选择函数(SSF)。然而,这种方法没有恰当地考虑行为分类中的不确定性,也不允许状态依赖于栖息地选择。另一种方法是在一个称为HMM-SSF的单一集成模型中估计状态转换和栖息地选择。
我们基于这项最新的方法学工作,使HMM-SSF方法更高效、更通用。我们专注于将模型写成一个HMM,其中观测过程由SSF定义,这样用于HMM的著名推断方法可以直接用于参数估计和状态分类。我们扩展模型以纳入HMM转移概率上的协变量,从而能够推断状态转换的时间和个体特定驱动因素。我们通过平原斑马(Equus quagga)的一个示例演示该方法,包括状态估计以及估计利用分布的模拟。
在斑马分析中,我们识别出两种行为状态,其运动和栖息地选择模式明显不同(“驻营”和“探索”)。特别是,尽管斑马在两种行为状态下都倾向于更喜欢草地较多的区域,但在快速、定向的探索状态下这种选择更为强烈。我们还发现行为中存在明显的昼夜周期,这表明斑马在早晨更有可能进行探索,而在晚上则驻营。
该方法可用于分析广泛物种和系统中特定行为的栖息地选择。为HMM和SSF开发的大量统计扩展和工具可直接应用于这个集成模型,使其成为一个非常通用的框架,可用于联合了解动物行为、栖息地选择和空间利用。