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A Latent Variable Model for Discovering Bird Species Commonly Misidentified by Citizen Scientists

机译:用于发现公民科学家常识的鸟类种类的潜在变量模型

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Data quality is a common source of concern for large-scale citizen science projects like eBird. In the case of eBird, a major cause of poor quality data is the misidentification of bird species by inexperienced contributors. A proactive approach for improving data quality is to discover commonly misidentified bird species and to teach inexperienced birders the differences between these species. To accomplish this goal, we develop a latent variable graphical model that can identify groups of bird species that are often confused for each other by eBird participants. Our model is a multi-species extension of the classic occupancy-detection model in the ecology literature. This multi-species extension requires a structure learning step as well as a computationally expensive parameter learning stage which we make efficient through a variational approximation. We show that our model can not only discover groups of misidentified species, but by including these misidentifications in the model, it can also achieve more accurate predictions of both species occupancy and detection.
机译:数据质量是一个普遍的公民科学项目的常见问题来源。在伊伯兰的情况下,质量差的数据的主要原因是通过缺乏经验的贡献者对鸟类的错误识别。提高数据质量的主动方法是发现常识的鸟类和教导缺乏经验的鸟类这些物种之间的差异。为实现这一目标,我们开发了一个潜在的变量图形模型,可以识别伯爵参与者通常互相混淆的鸟类群体。我们的模型是生态文学中经典占用检测模型的多种延伸。该多种延伸需要一个结构学习步骤以及通过变分近似进行高效的计算昂贵的参数学习阶段。我们表明我们的模型不仅可以发现误笃的物种群体,而且通过包括这些模型的这些误识,还可以实现对占用和检测的任何物种的准确预测。

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