Department of Statistics, Athens University of Business and Economics, Athens, Greece.
National Centre for Statistical Ecology, School of Mathematics, Statistics and Actuarial Science, University of Kent, Canterbury, Kent, UK.
Biometrics. 2020 Mar;76(1):281-292. doi: 10.1111/biom.13120. Epub 2019 Sep 13.
Time-series data resulting from surveying wild animals are often described using state-space population dynamics models, in particular with Gompertz, Beverton-Holt, or Moran-Ricker latent processes. We show how hidden Markov model methodology provides a flexible framework for fitting a wide range of models to such data. This general approach makes it possible to model abundance on the natural or log scale, include multiple observations at each sampling occasion and compare alternative models using information criteria. It also easily accommodates unequal sampling time intervals, should that possibility occur, and allows testing for density dependence using the bootstrap. The paper is illustrated by replicated time series of red kangaroo abundances, and a univariate time series of ibex counts which are an order of magnitude larger. In the analyses carried out, we fit different latent process and observation models using the hidden Markov framework. Results are robust with regard to the necessary discretization of the state variable. We find no effective difference between the three latent models of the paper in terms of maximized likelihood value for the two applications presented, and also others analyzed. Simulations suggest that ecological time series are not sufficiently informative to distinguish between alternative latent processes for modeling population survey data when data do not indicate strong density dependence.
野生动物调查产生的时间序列数据通常使用状态空间种群动力学模型来描述,特别是使用 Gompertz、Beverton-Holt 或 Moran-Ricker 潜在过程。我们展示了隐马尔可夫模型方法如何为这些数据提供一个灵活的框架来拟合广泛的模型。这种通用方法使得可以在自然或对数尺度上对丰度进行建模,包括在每个采样时刻进行多次观测,并使用信息准则比较替代模型。它还可以轻松适应不等的采样时间间隔,如果出现这种可能性,并允许使用自举法测试密度依赖性。本文通过红袋鼠丰度的重复时间序列和山羊数量的单变量时间序列进行说明,后者的数量是前者的一个数量级。在进行的分析中,我们使用隐马尔可夫框架拟合不同的潜在过程和观测模型。结果对于状态变量的必要离散化是稳健的。对于本文提出的两个应用程序以及其他分析的应用程序,我们发现三种潜在模型在最大化似然值方面没有有效差异。模拟表明,当数据不表明强烈的密度依赖性时,生态时间序列对于建模种群调查数据的替代潜在过程没有足够的信息。