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Evaluating the predictive abilities of community occupancy models using AUC while accounting for imperfect detection

机译:使用AUC评估社区占用模型的预测能力,同时考虑不完善的检测

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The ability to accurately predict patterns of species' occurrences is fundamental to the successful management of animal communities. To determine optimal management strategies, it is essential to understand species-habitat relationships and how species habitat use is related to natural or human-induced environmental changes. Using five years of monitoring data in the Chesapeake and Ohio Canal National Historical Park, Maryland, USA, we developed four multispecies hierarchical models for estimating amphibian wetland use that account for imperfect detection during sampling. The models were designed to determine which factors (wetland habitat characteristics, annual trend effects, spring/summer precipitation, and previous wetland occupancy) were most important for predicting future habitat use. We used the models to make predictions about species occurrences in sampled and unsampled wetlands and evaluated model projections using additional data. Using a Bayesian approach, we calculated a posterior distribution of receiver operating characteristic area under the curve (ROC AUC) values, which allowed us to explicitly quantify the uncertainty in the quality of our predictions and to account for false negatives in the evaluation data set. We found that wetland hydroperiod (the length of time that a wetland holds water), as well as the occurrence state in the prior year, were generally the most important factors in determining occupancy. The model with habitat-only covariates predicted species occurrences well; however, knowledge of wetland use in the previous year significantly improved predictive ability at the community level and for two of 12 species/species complexes. Our results demonstrate the utility of multispecies models for understanding which factors affect species habitat use of an entire community (of species) and provide an improved methodology using AUC that is helpful for quantifying the uncertainty in model predictions while explicitly accounting for detection biases.
机译:准确预测物种发生方式的能力是成功管理动物群落的基础。为了确定最佳管理策略,必须了解物种与栖息地的关系以及物种栖息地的使用与自然或人为环境变化之间的关系。使用美国马里兰州切萨皮克和俄亥俄运河国家历史公园的五年监测数据,我们开发了四个多物种层次模型来估计两栖类湿地的使用,这解释了采样期间的不完善检测。设计模型是为了确定哪些因素(湿地栖息地特征,年度趋势影响,春季/夏季降水以及以前的湿地占用)对于预测未来的栖息地使用最重要。我们使用模型对采样和非采样湿地中物种的出现进行了预测,并使用其他数据评估了模型预测。使用贝叶斯方法,我们计算了曲线下的接收器工作特征区域(ROC AUC)值的后验分布,这使我们能够明确量化预测质量的不确定性,并评估评估数据集中的假阴性。我们发现,湿地的水期(湿地保持水的时间长度)以及上一年的发生状态通常是确定占用率的最重要因素。仅具有栖息地的协变量模型很好地预测了物种的发生;然而,对前一年湿地利用的了解大大提高了社区一级和12种物种/物种复合体中两种的预测能力。我们的结果证明了多物种模型的实用性,可用于了解哪些因素影响整个社区(物种)的物种栖息地使用,并提供一种使用AUC的改进方法,该方法有助于量化模型预测中的不确定性,同时明确考虑检测偏差。

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