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Resolving misaligned spatial data with integrated species distribution models

机译:使用综合物种分发模型解决未对准的空间数据

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Advances in species distribution modeling continue to be driven by a need to predict species responses to environmental change coupled with increasing data availability. Recent work has focused on development of methods that integrate multiple streams of data to model species distributions. Combining sources of information increases spatial coverage and can improve accuracy in estimates of species distributions. However, when fusing multiple streams of data, the temporal and spatial resolutions of data sources may be mismatched. This occurs when data sources have fluctuating geographic coverage, varying spatial scales and resolutions, and differing sources of bias and sparsity. It is well documented in the spatial statistics literature that ignoring the misalignment of different data sources will result in bias in both the point estimates and uncertainty. This will ultimately lead to inaccurate predictions of species distributions. Here, we examine the issue of misaligned data as it relates specifically to integrated species distribution models. We then provide a general solution that builds off work in the statistical literature for the change-of-support problem. Specifically, we leverage spatial correlation and repeat observations at multiple scales to make statistically valid predictions at the ecologically relevant scale of inference. An added feature of the approach is that addressing differences in spatial resolution between data sets can allow for the evaluation and calibration of lesser-quality sources in many instances. Using both simulations and data examples, we highlight the utility of this modeling approach and the consequences of not reconciling misaligned spatial data. We conclude with a brief discussion of the upcoming challenges and obstacles for species distribution modeling via data fusion.
机译:物种分布建模的进步继续推动需要预测对环境变化的物种响应加上增加的数据可用性。最近的工作侧重于开发将多个数据流集成到模型物种分布的方法。组合信息来源增加了空间覆盖率,可以提高物种分布估计的准确性。但是,当融合多个数据流时,数据源的时间和空间分辨率可能不匹配。当数据源具有波动的地理覆盖率,不同的空间尺度和分辨率以及不同的偏差源和稀疏性的不同来时,就会发生这种情况。在空间统计文献中忽略了不同数据源的未对准,将导致点估计和不确定性的偏见。这将最终导致物种分布的不准确性预测。在这里,我们研究了与集成物种分发模型的专门相关的错位数据问题。然后,我们提供了一项普遍解决方案,在统计文献中建立了支持支持问题的问题。具体地,我们利用多种尺度的空间相关性和重复观察,以在生态相关的推理中进行统计有效的预测。该方法的一个附加特征是解决数据集之间的空间分辨率的差异可以允许在许多情况下允许较小质量源的评估和校准。使用模拟和数据示例,我们突出了该建模方法的实用程序以及不调和未对准空间数据的后果。我们谨简要讨论通过数据融合的挑战模型的即将到来的挑战和障碍。

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