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Clustering Species Accumulation Curves to Identify Skill Levels of Citizen Scientists Participating in the eBird Project

机译:聚类物种积累曲线,以识别参加识别项目的公民科学家的技能水平

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Although citizen science projects such as eBird can compile large volumes of data over broad spatial and temporal extents, the quality of this data is a concern due to differences in the skills of volunteers at identifying bird species. Species accumulation curves, which plot the number of unique species observed over time, are an effective way to quantify the skill level of an eBird participant. Intuitively, more skilled observers can identify a greater number of species per unit time than inexperienced birders, resulting in a steeper curve. We propose a mixture model for clustering species accumulation curves. These clusters enable the identification of distinct skill levels of eBird participants, which can then be used to build more accurate species distribution models and to develop automated data quality filters.
机译:虽然eBird等公民科学项目可以在广泛的空间和时间范围内编制大量数据,但由于识别鸟类的志愿者技能的差异,这种数据的质量是一个问题。物种累积曲线,绘制随时间观察到的独特物种的数量是量化识别参与者的技能水平的有效方法。直观地,更熟练的观察者可以识别每单位时间比未经经验的鸟类数量更多的物种,导致陡峭的曲线。我们提出了一种用于聚类物种累积曲线的混合模型。这些集群能够识别识别识别参与者的不同技能水平,然后可以用于构建更准确的物种分布模型并开发自动数据质量滤波器。

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