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Does Your Species Have Memory? Analysing Capture-Recapture Data with Memory Models.

机译:您的物种有记忆吗?使用内存模型分析捕获-捕获数据。

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摘要

1. We examine memory models for multi-site capture-recapture data. This is an important topic,as animals may exhibit behaviour that is more complex than simple first-order Markov movement between sites, when it is necessary to devise and fit appropriate models to data.udud2. We consider the Arnason-Schwarz model for multi-site capture-recapture data, which incorporates just first-order Markov movement, and also two alternative models that allow for memory, the Brownie model and the Pradel model. We use simulation to compare two alternative tests which may be undertaken to determine whether models for multi-site capture-recapture data need to incorporate memory.udud3. Increasing the complexity of models runs the risk of introducing parameters that cannot be estimated, irrespective of how much data are collected, a feature which is known as parameter redundancy. Rouan et al (JABES, 2009, pp 338-355) suggest a constraint that may be applied to overcome parameter redundancy when it is present in multi-site memory models. For this case, we apply symbolic methods to derive a simpler constraint, which allows more parameters to be estimated, and give general results not limited to a particular configuration. We also consider the effect sparse data can have on parameter redundancy, and recommend minimum sample sizes.udud4. Memory models for multi-site capture-recapture data can be highly complex, and difficult to fit to data. We emphasise the importance of a structured approach to modelling such data, by considering a priori which parameters can be estimated, which constraints are needed in order for estimation to take place, and how much data need to be collected. We also give guidance on the amount of data needed to use two alternative families of tests for whether models for multi-site capture-recapture data need to incorporate memory.
机译:1.我们检查用于多站点捕获-捕获数据的内存模型。这是一个重要的主题,因为当有必要为数据设计和拟合适当的模型时,动物可能表现出比站点之间的简单一阶马尔可夫运动更为复杂的行为。 ud ud2。我们考虑用于多站点捕获-捕获数据的Arnason-Schwarz模型,该模型仅包含一阶Markov运动,以及两个允许存储的替代模型,即Brownie模型和Pradel模型。我们使用仿真来比较两个备选测试,这些测试可以用来确定多站点捕获-捕获数据的模型是否需要合并内存。增加模型的复杂度会带来引入无法估计的参数的风险,而与收集多少数据无关,这是一种称为参数冗余的功能。 Rouan等人(JABES,2009,第338-355页)提出了一种约束,可以将其应用于克服多站点内存模型中存在的参数冗余。对于这种情况,我们应用符号方法来导出更简单的约束,该约束允许估计更多参数,并给出不限于特定配置的一般结果。我们还考虑稀疏数据可能会对参数冗余产生影响,并建议最小样本大小。 ud ud4。用于多站点捕获-捕获数据的内存模型可能非常复杂,并且很难适应数据。我们强调通过考虑先验可估计哪些参数,需要哪些约束才能进行估计以及需要收集多少数据的建模此类数据的结构化方法的重要性。我们还为使用两个替代测试系列的多站点捕获-捕获数据模型是否需要合并内存提供了所需的数据量指导。

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