Integrated models are a popular tool for analyzing species of conservation concern. Species of conservation concern are often monitored by multiple entities that generate several datasets. Individually, these datasets may be insufficient for guiding management due to low spatio-temporal resolution, biased sampling, or large observational uncertainty. Integrated models provide an approach for assimilating multiple datasets in a coherent framework that can compensate for these deficiencies. While conventional integrated models have been used to assimilate count data with surveys of survival, fecundity, and harvest, they can also assimilate ecological surveys that have differing spatio-temporal regions and observational uncertainties. Motivated by independent aerial and ground surveys of lesser prairie-chicken, we developed an integrated modeling approach that assimilates density estimates derived from surveys with distinct sources of observational error into a joint framework that provides shared inference on spatio-temporal trends. We model these data using a Bayesian Markov melding approach and apply several data augmentation strategies for efficient sampling. In a simulation study, we show that our integrated model improved predictive performance relative to models that analyzed the surveys independently. We use the integrated model to facilitate prediction of lesser prairie-chicken density at unsampled regions and perform a sensitivity analysis to quantify the inferential cost associated with reduced survey effort.
翻译:综合模型是分析关注的物种常用的工具。关注的物种通常由多个实体监测,这些实体产生多个数据集。从个别数据集的角度看,这些数据集可能由于低时空分辨率、偏见取样或大量可观察不确定性等原因而无法进行管理。集成模型提供了一种方法,可以在一个一致的框架内同化多个数据集,从而弥补这些不足。虽然传统的集成模型已用于将计数数据与存活、繁殖和收获调查同化,但它们还可以同化具有不同时空区域和观测不确定性的生态调查。受独立空中和地面调查的影响,我们开发了一种综合建模方法,将不同观测误差来源的密度估计同化为一个联合框架,为时空趋势提供共享推断。我们使用贝叶斯马尔可夫融合方法对这些数据进行建模,并应用多种数据增强策略来进行高效采样。在模拟研究中,我们发现我们的集成模型相对于独立分析调查的模型,提高了预测性能。我们使用综合模型来方便地预测未采样区域的较小草原鸡密度,并进行敏感性分析,以量化减少调查工作的推论成本。