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unmarked: An R Package for Fitting Hierarchical Models of Wildlife Occurrence and Abundance

机译:未标记:适合野生生物发生和丰度层次模型的R包

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Ecological research uses data collection techniques that are prone to substantial and unique types of measurement error to address scientific questions about species abundance and distribution. These data collection schemes include a number of survey methods in which unmarked individuals are counted, or determined to be present, at spatially- referenced sites. Examples include site occupancy sampling, repeated counts, distance sampling, removal sampling, and double observer sampling. To appropriately analyze these data, hierarchical models have been developed to separately model explanatory variables of both a latent abundance or occurrence process and a conditional detection process. Because these models have a straightforward interpretation paralleling mechanisms under which the data arose, they have recently gained immense popularity. The common hierarchical structure of these models is well-suited for a unified modeling interface. The R package unmarked provides such a unified modeling framework, including tools for data exploration, model fitting, model criticism, post-hoc analysis, and model comparison.
机译:生态研究使用的数据收集技术容易出现实质性和独特类型的测量误差,以解决有关物种丰度和分布的科学问题。这些数据收集方案包括许多调查方法,在这些方法中,对未标记的个人进行计数或确定其在空间参考位置处存在。示例包括场所占用采样,重复计数,距离采样,移除采样和双重观察者采样。为了适当地分析这些数据,已经开发出层次模型来分别对潜在丰度或发生过程以及条件检测过程的解释变量建模。由于这些模型具有直接的解释并行机制,可以根据这种机制生成数据,因此它们最近获得了极大的普及。这些模型的通用层次结构非常适合于统一的建模接口。未标记的R包提供了这样一个统一的建模框架,包括用于数据探索,模型拟合,模型批判,事后分析和模型比较的工具。

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