Lele Subhash R
Department of Mathematical and Statistical Sciences, University of Alberta, Edmonton, Canada.
Ecology. 2006 Jan;87(1):189-202. doi: 10.1890/04-1655.
It is well known that sampling variability, if not properly taken into account, affects various ecologically important analyses. Statistical inference for stochastic population dynamics models is difficult when, in addition to the process error, there is also sampling error. The standard maximum-likelihood approach suffers from large computational burden. In this paper, I discuss an application of the composite-likelihood method for estimation of the parameters of the Gompertz model in the presence of sampling variability. The main advantage of the method of composite likelihood is that it reduces the computational burden substantially with little loss of statistical efficiency. Missing observations are a common problem with many ecological time series. The method of composite likelihood can accommodate missing observations in a straightforward fashion. Environmental conditions also affect the parameters of stochastic population dynamics models. This method is shown to handle such nonstationary population dynamics processes as well. Many ecological time series are short, and statistical inferences based on such short time series tend to be less precise. However, spatial replications of short time series provide an opportunity to increase the effective sample size. Application of likelihood-based methods for spatial time-series data for population dynamics models is computationally prohibitive. The method of composite likelihood is shown to have significantly less computational burden, making it possible to analyze large spatial time-series data. After discussing the methodology in general terms, I illustrate its use by analyzing a time series of counts of American Redstart (Setophaga ruticilla) from the Breeding Bird Survey data, San Joaquin kit fox (Vulpes macrotis mutica) population abundance data, and spatial time series of Bull trout (Salvelinus confluentus) redds count data.
众所周知,如果没有恰当地考虑抽样变异性,它会影响各种具有生态重要性的分析。当除了过程误差之外还存在抽样误差时,对随机种群动态模型进行统计推断是困难的。标准的最大似然方法存在计算负担大的问题。在本文中,我讨论了在存在抽样变异性的情况下,复合似然方法在估计冈珀茨模型参数中的应用。复合似然方法的主要优点是它在几乎不损失统计效率的情况下大幅降低了计算负担。缺失观测值是许多生态时间序列中常见的问题。复合似然方法可以直接处理缺失观测值。环境条件也会影响随机种群动态模型的参数。该方法也被证明能够处理此类非平稳种群动态过程。许多生态时间序列较短,基于此类短时间序列的统计推断往往不太精确。然而,短时间序列的空间重复提供了增加有效样本量的机会。将基于似然的方法应用于种群动态模型的空间时间序列数据在计算上是令人望而却步的。复合似然方法被证明具有显著更低的计算负担,使得分析大型空间时间序列数据成为可能。在总体讨论了该方法之后,我通过分析来自繁殖鸟类调查数据的美洲红尾鸲(Setophaga ruticilla)数量时间序列、圣华金小狐(Vulpes macrotis mutica)种群丰度数据以及公牛鳟(Salvelinus confluentus)产卵砾石数量数据的空间时间序列来说明其用法。