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普查误差与密度依赖的检测

Census error and the detection of density dependence.

作者信息

Freckleton Robert P, Watkinson Andrew R, Green Rhys E, Sutherland William J

机构信息

Department of Animal and Plant Sciences, University of Sheffield, Sheffield, UK.

出版信息

J Anim Ecol. 2006 Jul;75(4):837-51. doi: 10.1111/j.1365-2656.2006.01121.x.

Abstract
  1. Studies aiming to identify the prevalence and nature of density dependence in ecological populations have often used statistical analysis of ecological time-series of population counts. Such time-series are also being used increasingly to parameterize models that may be used in population management. 2. If time-series contain measurement errors, tests that rely on detecting a negative relationship between log population change and population size are biased and prone to spuriously detecting density dependence (Type I error). This is because the measurement error in density for a given year appears in the corresponding change in population density, with equal magnitude but opposite sign. 3. This effect introduces bias that may invalidate comparisons of ecological data with density-independent time-series. Unless census error can be accounted for, time-series may appear to show strongly density-dependent dynamics, even though the density-dependent signal may in reality be weak or absent. 4. We distinguish two forms of census error, both of which have serious consequences for detecting density dependence. 5. First, estimates of population density are based rarely on exact counts, but on samples. Hence there exists sampling error, with the level of error depending on the method employed and the number of replicates on which the population estimate is based. 6. Secondly, the group of organisms measured is often not a truly self-contained population, but part of a wider ecological population, defined in terms of location or behaviour. Consequently, the subpopulation studied may effectively be a sample of the population and spurious density dependence may be detected in the dynamics of a single subpopulation. In this case, density dependence is detected erroneously, even if numbers within the subpopulation are censused without sampling error. 7. In order to illustrate how process variation and measurement error may be distinguished we review data sets (counts of numbers of birds by single observers) for which both census error and long-term variance in population density can be estimated. 8. Tests for density dependence need to obviate the problem that measured population sizes are typically estimates rather than exact counts. It is possible that in some cases it may be possible to test for density dependence in the presence of unknown levels of census error, for example by uncovering nonlinearities in the density response. However, it seems likely that these may lack power compared with analyses that are able to explicitly include census error and we review some recently developed methods.
摘要
  1. 旨在确定生态种群中密度依赖的发生率和性质的研究,常常对种群数量的生态时间序列进行统计分析。这类时间序列也越来越多地被用于为可用于种群管理的模型设定参数。2. 如果时间序列包含测量误差,那么依赖于检测对数种群变化与种群大小之间负相关关系的检验就会有偏差,并且容易错误地检测到密度依赖(I型错误)。这是因为给定年份密度的测量误差会出现在相应的种群密度变化中,大小相等但符号相反。3. 这种效应会引入偏差,可能使生态数据与非密度依赖时间序列的比较无效。除非能考虑到普查误差,否则时间序列可能看似显示出强烈的密度依赖动态,尽管实际上密度依赖信号可能很弱或不存在。4. 我们区分两种普查误差形式,这两种误差对于检测密度依赖都有严重后果。5. 首先,种群密度估计很少基于精确计数,而是基于样本。因此存在抽样误差,误差水平取决于所采用的方法以及种群估计所基于的重复次数。6. 其次,所测量的生物群体通常不是一个真正独立的种群,而是更广泛生态种群的一部分,根据位置或行为来定义。因此,所研究的亚种群实际上可能是该种群的一个样本,并且可能在单个亚种群的动态中检测到虚假的密度依赖。在这种情况下,即使亚种群内的数量在普查时没有抽样误差,也会错误地检测到密度依赖。7. 为了说明如何区分过程变化和测量误差,我们回顾了一些数据集(单个观察者统计的鸟类数量),对于这些数据集,可以估计普查误差和种群密度的长期方差。8. 密度依赖检验需要避免所测量的种群大小通常是估计值而非精确计数这一问题。在某些情况下,有可能在存在未知水平普查误差的情况下检验密度依赖,例如通过揭示密度响应中的非线性。然而,与能够明确纳入普查误差的分析相比,这些方法可能缺乏效力,我们回顾了一些最近开发的方法。

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