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Estimating resource selection with count data

机译:使用计数数据估算资源选择

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摘要

Resource selection functions (RSFs) are typically estimated by comparing covariates at a discrete set of “used” locations to those from an “available” set of locations. This RSF approach treats the response as binary and does not account for intensity of use among habitat units where locations were recorded. Advances in global positioning system (GPS) technology allow animal location data to be collected at fine spatiotemporal scales and have increased the size and correlation of data used in RSF analyses. We suggest that a more contemporary approach to analyzing such data is to model intensity of use, which can be estimated for one or more animals by relating the relative frequency of locations in a set of sampling units to the habitat characteristics of those units with count-based regression and, in particular, negative binomial (NB) regression. We demonstrate this NB RSF approach with location data collected from 10 GPS-collared Rocky Mountain elk (Cervus elaphus) in the Starkey Experimental Forest and Range enclosure. We discuss modeling assumptions and show how RSF estimation with NB regression can easily accommodate contemporary research needs, including: analysis of large GPS data sets, computational ease, accounting for among-animal variation, and interpretation of model covariates. We recommend the NB approach because of its conceptual and computational simplicity, and the fact that estimates of intensity of use are unbiased in the face of temporally correlated animal location data.
机译:资源选择函数(RSF)通常是通过将“使用”位置的离散集与“可用”位置的协变量进行比较来估算的。这种RSF方法将响应视为二进制,并且不考虑记录位置的栖息地单位之间的使用强度。全球定位系统(GPS)技术的进步允许以精细的时空尺度收集动物位置数据,并增加了RSF分析中使用的数据的大小和相关性。我们建议,一种更现代的分析此类数据的方法是对使用强度进行建模,可以通过将一组采样单位中位置的相对频率与具有计数的那些单位的栖息地特征相关联,对一种或多种动物进行估算。回归,尤其是负二项式(NB)回归。我们用从Starkey实验森林和山脉围栏中的10个GPS领的落矶山麋鹿(Cervus elaphus)收集的位置数据演示了这种NB RSF方法。我们讨论了建模假设,并展示了使用NB回归进行RSF估计如何轻松满足当代研究的需求,包括:大型GPS数据集的分析,计算的简便性,动物间差异的计算以及模型协变量的解释。我们建议使用NB方法,因为它的概念和计算简单,并且在面对时间相关的动物位置数据时,使用强度的估计无偏见。

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