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A Bayesian Random Effects Discrete-Choice Model for Resource Selection: Population-Level Selection Inference

机译:用于资源选择的贝叶斯随机效应离散选择模型:总体水平选择推理

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Modeling the probability of use of land units characterized by discrete and continuous measures, we present a Bayesian random-effects model to assess resource selection. This model provides simultaneous estimation of both individual- and population-level selection. Deviance information criterion (DIC), a Bayesian alternative to AIC that is sample-size specific, is used for model selection. Aerial radiolocation data from 76 adult female caribou (Rangifer tarandus) and calf pairs during 1 year on an Arctic coastal plain calving ground were used to illustrate models and assess population-level selection of landscape attributes, as well as individual heterogeneity of selection. Landscape attributes included elevation, NDVI (a measure of forage greenness), and land cover-type classification. Results from the first of a 2-stage model-selection procedure indicated that there is substantial heterogeneity among cow–calf pairs with respect to selection of the landscape attributes. In the second stage, selection of models with heterogeneity included indicated that at the population-level, NDVI and land cover class were significant attributes for selection of different landscapes by pairs on the calving ground. Population-level selection coefficients indicate that the pairs generally select landscapes with higher levels of NDVI, but the relationship is quadratic. The highest rate of selection occurs at values of NDVI less than the maximum observed. Results for land cover-class selections coefficients indicate that wet sedge, moist sedge, herbaceous tussock tundra, and shrub tussock tundra are selected at approximately the same rate, while alpine and sparsely vegetated landscapes are selected at a lower rate. Furthermore, the variability in selection by individual caribou for moist sedge and sparsely vegetated landscapes is large relative to the variability in selection of other land cover types. The example analysis illustrates that, while sometimes computationally intense, a Bayesian hierarchical discrete-choice model for resource selection can provide managers with 2 components of population-level inference: average population selection and variability of selection. Both components are necessary to make sound management decisions based on animal selection.
机译:对以离散和连续测量为特征的土地单位的使用概率进行建模,我们提出了贝叶斯随机效应模型来评估资源选择。该模型可以同时估计个人和人口级别的选择。偏差信息标准(DIC)是特定于样本大小的AIC的贝叶斯替代方法,用于模型选择。在一年的时间里,从北极沿海平原产犊场上的76只成年雌性北美驯鹿(Rangifer tarandus)和小牛对的空中放射定位数据用于说明模型和评估景观属性的种群水平选择以及选择的个体异质性。景观属性包括海拔,NDVI(一种草料绿色度)和土地覆盖类型分类。从两阶段模型选择过程的第一阶段得出的结果表明,在小牛对之间,对于景观属性的选择存在很大的异质性。在第二阶段,选择具有异质性的模型表明,在人口水平上,NDVI和土地覆盖类别是在产犊场上成对选择不同景观的重要属性。总体水平的选择系数表明,两对通常选择具有较高NDVI水平的景观,但是这种关系是二次关系。 NDVI值小于观察到的最大值时,选择率最高。土地覆盖类别选择系数的结果表明,湿莎草,湿莎草,草丛苔原和灌木丛苔原苔的选择率大致相同,而高山和稀疏植被的景观选择率较低。此外,相对于其他土地覆被类型的选择差异,北美驯鹿对潮湿的莎草和稀疏植被景观的选择差异很大。示例分析表明,尽管有时计算量很大,但是用于资源选择的贝叶斯分层离散选择模型可以为管理人员提供总体水平推断的两个组成部分:平均总体选择和选择的可变性。这两个要素对于根据动物选择做出合理的管理决策都是必需的。

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