Australian Bureau of Agricultural and Resource Economics and Sciences, Canberra, Australia; Australian National University, Canberra, Australia.
Australian Bureau of Agricultural and Resource Economics and Sciences, Canberra, Australia.
Theor Popul Biol. 2022 Apr;144:70-80. doi: 10.1016/j.tpb.2021.10.001. Epub 2021 Nov 8.
It is not possible to establish the absence of a population with certainty using imperfect zero-sighting records, but absence can be inferred. In this paper we use Bayesian methods to formulate analytical inferred distributions and statistics. When such formulations are available, they offer a highly efficient and powerful means of analysis. Our purpose is to provide accessible and versatile formulations to support an assessment of population absence for management decisions, using data from a series of regular and targeted surveys with zero-sightings. The stochastic processes considered here are prior population size, growth and imperfect detection, which are combined into a single distribution with sufficient flexibility to accommodate alternative distributions for each of the driving processes. Analytical solutions formulated include the inferred mean and variance for population size or number of infested survey-units, the probability of absence, the probability of a series of negative surveys conditional on presence, and the probability a population is first detected in a given survey, although we also formulate other statistics and provide explicit thresholds designed to support management decisions. Our formulation and results are straightforward to apply and provide insight into the nonlinear interactions and general characteristics of such systems. Although motivated by an assessment of population absence following a pest eradication program, results are also relevant to the status of threatened species, to 'proof-of-freedom' requirements for trade, and for inferring population size when a population is first detected.
使用不完善的零观测记录不可能确定一个种群的不存在,但可以推断。在本文中,我们使用贝叶斯方法来构建分析推断分布和统计量。当这些公式可用时,它们提供了一种高效而强大的分析手段。我们的目的是提供易于使用和通用的公式,以支持基于一系列定期和有针对性的零观测调查数据,对种群不存在情况进行评估,以便做出管理决策。这里考虑的随机过程包括初始种群数量、增长和不完全检测,它们被组合成一个单一的分布,具有足够的灵活性,可以适应驱动过程的每种情况的替代分布。制定的分析解决方案包括种群大小或受感染调查单位数量的推断均值和方差、不存在的概率、存在条件下一系列负调查的概率以及给定调查中首次检测到种群的概率,尽管我们还制定了其他统计数据,并提供了旨在支持管理决策的明确阈值。我们的公式和结果易于应用,并深入了解此类系统的非线性相互作用和一般特征。虽然我们的公式是基于害虫根除计划后种群不存在的评估,但结果也与受威胁物种的状况、贸易的“自由证明”要求以及首次检测到种群时推断种群数量有关。