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Effects of sampling error and temporal correlations in population growth on process variance estimators

机译:总体增长中抽样误差和时间相关性对过程方差估计量的影响

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Estimates of a population's growth rate and process variance from time-series data are often used to calculate risk metrics such as the probability of quasi-extinction, but temporal correlations in the data from sampling error, intrinsic population factors, or environmental conditions can bias process variance estimators and detrimentally affect risk predictions. It has been claimed (McNamara and Harding, Ecol Lett 7:16-20, 2004) that estimates of the long-term variance that incorporate observed temporal correlations in population growth are unaffected by sampling error; however, no estimation procedures were proposed for time-series data. We develop a suite of such long-term variance estimators, and use simulated data with temporally autocorrelated population growth and sampling error to evaluate their performance. In some cases, we get nearly unbiased long-term variance estimates despite ignoring sampling error, but the utility of these estimators is questionable because of large estimation uncertainty and difficulties in estimating correlation structure in practice. Process variance estimators that ignored temporal correlations generally gave more precise estimates of the variability in population growth and of the probability of quasi-extinction. We also found that the estimation of probability of quasi-extinction was greatly improved when quasi-extinction thresholds were set relatively close to population levels. Because of precision concerns, we recommend using simple models for risk estimates despite potential biases, and limiting inference to quantifying relative risk; e.g., changes in risk over time for a single population or comparative risk among populations.
机译:通常使用时间序列数据估算人口的增长率和过程方差,以计算风险指标,例如准灭绝的可能性,但是由于采样误差,内部人口因素或环境条件而导致的数据时间相关性可能会使过程产生偏差方差估计量,会对风险预测产生不利影响。据称(McNamara和Harding,Ecol Lett 7:16-20,2004),结合人口增长中观察到的时间相关性的长期方差的估计不受抽样误差的影响。但是,没有提出对时序数据的估计程序。我们开发了一套此类长期方差估计量,并使用具有时间自相关种群增长和抽样误差的模拟数据来评估其性能。在某些情况下,尽管忽略了采样误差,但我们仍获得了几乎无偏差的长期方差估计,但是由于估计不确定性大,并且在实践中难以估计相关结构,因此这些估计器的实用性值得怀疑。忽略时间相关性的过程方差估计量通常会更精确地估计种群增长的变异性和准灭绝的可能性。我们还发现,当将准灭绝阈值设置为相对接近人口水平时,准灭绝概率的估计会大大提高。由于存在精度问题,我们建议尽管存在潜在的偏差,但仍应使用简单的模型进行风险估算,并限制推断相对风险的量化;例如,单个人群的风险随时间变化或人群之间的比较风险。

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