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首页> 外文期刊>Ecology and Evolution >Spatial models to account for variation in observer effort in bird atlases
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Spatial models to account for variation in observer effort in bird atlases

机译:空间模型可解释观察者在鸟图集上所做努力的变化

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Abstract To assess the importance of variation in observer effort between and within bird atlas projects and demonstrate the use of relatively simple conditional autoregressive (CAR) models for analyzing grid-based atlas data with varying effort. Pennsylvania and West Virginia, United States of America. We used varying proportions of randomly selected training data to assess whether variations in observer effort can be accounted for using CAR models and whether such models would still be useful for atlases with incomplete data. We then evaluated whether the application of these models influenced our assessment of distribution change between two atlas projects separated by twenty years (Pennsylvania), and tested our modeling methodology on a state bird atlas with incomplete coverage (West Virginia). Conditional Autoregressive models which included observer effort and landscape covariates were able to make robust predictions of species distributions in cases of sparse data coverage. Further, we found that CAR models without landscape covariates performed favorably. These models also account for variation in observer effort between atlas projects and can have a profound effect on the overall assessment of distribution change. Accounting for variation in observer effort in atlas projects is critically important. CAR models provide a useful modeling framework for accounting for variation in observer effort in bird atlas data because they are relatively simple to apply, and quick to run.
机译:摘要为了评估鸟类图集项目之间以及内部的观察者工作量变化的重要性,并演示了使用相对简单的条件自回归(CAR)模型来分析工作量不同的基于网格的图集数据。美国宾夕法尼亚州和西弗吉尼亚州。我们使用了不同比例的随机选择的训练数据来评估使用CAR模型是否可以解释观察者努力的差异,以及这些模型是否仍可用于数据不完整的地图集。然后,我们评估了这些模型的应用是否影响了我们对两个相隔二十年的地图集项目之间的分布变化的评估(宾夕法尼亚州),并测试了在覆盖率不完整的州鸟图集上进行建模的方法(西弗吉尼亚州)。在数据稀疏的情况下,包括观察者努力和景观协变量在内的条件自回归模型能够对物种分布做出可靠的预测。此外,我们发现没有景观协变量的CAR模型表现良好。这些模型还说明了地图集项目之间观察员努力的差异,并且可能对分布变化的整体评估产生深远影响。评估图集项目中观察者努力的差异至关重要。 CAR模型提供了一个有用的建模框架,用于解释鸟类图集数据中观察者的努力变化,因为它们相对易于应用并且运行迅速。

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