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首页> 外文期刊>Environmental and ecological statistics >Inference for finite-sample trajectories in dynamic multi-state site-occupancy models using hidden Markov model smoothing
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Inference for finite-sample trajectories in dynamic multi-state site-occupancy models using hidden Markov model smoothing

机译:使用隐马尔可夫模型平滑推断动态多状态站点占用模型中的有限样本轨迹

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摘要

Ecologists and wildlife biologists increasingly use latent variable models to study patterns of species occurrence when detection is imperfect. These models have recently been generalized to accommodate both a more expansive description of state than simple presence or absence, and Markovian dynamics in the latent state over successive sampling seasons. In this paper, we write these multi-season, multi-state models as hidden Markov models to find bothmaximum likelihood estimates of model parameters and finite-sample estimators of the trajectory of the latent state over time. These estimators are especially useful for characterizing population trends in species of conservation concern. We also develop parametric bootstrap procedures that allow formal inference about latent trend. We examine model behavior through simulation, and we apply the model to data from the North American Amphibian Monitoring Program.
机译:生态学家和野生生物生物学家越来越多地使用潜变量模型来研究检测不完善时物种发生的模式。这些模型最近已被普遍化,以适应比简单存在或不存在更广泛的状态描述,以及连续采样季节内潜在状态下的马尔可夫动力学。在本文中,我们将这些多季节,多状态模型编写为隐马尔可夫模型,以找到模型参数的最大似然估计和潜在状态轨迹随时间的有限样本估计量。这些估计量对于表征受保护物种的种群趋势特别有用。我们还开发了参数引导程序,可以对潜在趋​​势进行形式上的推断。我们通过仿真检查模型的行为,并将模型应用于来自北美两栖动物监测计划的数据。

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