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Effects of model complexity and priors on estimation using sequential importance sampling/resampling for species conservation

机译:使用物种重要性的顺序重要性抽样/再抽样进行模型复杂性和先验对估算的影响

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We examined the effects of complexity and priors on the accuracy of models used to estimate ecological and observational processes, and to make predictions regarding population size and structure. State-space models are useful for estimating complex, unobservable population processes and making predictions about future populations based on limited data. To better understand the utility of state space models in evaluating population dynamics, we used them in a Bayesian framework and compared the accuracy of models with differing complexity, with and without informative priors using sequential importance sampling/resampling (SISR). Count data were simulated for 25 years using known parameters and observation process for each model. We used kernel smoothing to reduce the effect of particle depletion, which is common when estimating both states and parameters with SISR. Models using informative priors estimated parameter values and population size with greater accuracy than their non-informative counterparts. While the estimates of population size and trend did not suffer greatly in models using non-informative priors, the algorithm was unable to accurately estimate demographic parameters. This model framework provides reasonable estimates of population size when little to no information is available; however, when information on some vital rates is available, SISR can be used to obtain more precise estimates of population size and process. Incorporating model complexity such as that required by structured populations with stage-specific vital rates affects precision and accuracy when estimating latent population variables and predicting population dynamics. These results are important to consider when designing monitoring programs and conservation efforts requiring management of specific population segments. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们研究了复杂性和先验性对模型的准确性的影响,该模型用于估计生态和观测过程,并对人口规模和结构做出预测。状态空间模型可用于估计复杂的,不可观察的人口过程,并基于有限的数据对未来的人口进行预测。为了更好地了解状态空间模型在评估种群动态中的效用,我们在贝叶斯框架中使用了它们,并比较了具有和不具有先验信息的先验重要性(使用顺序重要性采样/重采样(SISR))具有不同复杂性的模型的准确性。使用已知参数和每个模型的观察过程对计数数据进行了25年的模拟。我们使用核平滑来减少粒子耗竭的影响,这在使用SISR估算状态和参数时很常见。使用信息先验的模型比无信息的先验模型更准确地估计参数值和总体大小。尽管在使用非信息先验的模型中,人口规模和趋势的估计并没有受到很大的影响,但是该算法无法准确地估计人口统计参数。当几乎没有信息可用时,该模型框架将提供合理的人口规模估计;但是,当可以获得一些重要比率的信息时,可以使用SISR来获得更准确的人口规模和过程估计。在估算潜在人口变量并预测人口动态时,将模型复杂性(如结构化人口所需的复杂性与特定阶段的生命率)相结合会影响精度和准确性。在设计监测计划和需要对特定人群进行管理的保护工作时,必须考虑这些结果。 (C)2016 Elsevier B.V.保留所有权利。

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