物种分布建模的公民科学数据建模专家和新手

Jun Yu, Weng-Keen Wong, R. Hutchinson
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引用次数: 58

摘要

公民科学家是来自社区的志愿人员,以实地助理的身份参与科学研究bbb,他们使研究能够在比训练有素的科学家所能涵盖的更大的空间和时间尺度上进行。物种分布模型是一个可以从公民科学中获益的研究领域,它涉及了解物种与栖息地的关系。eBird项目b[16]是现存最大的公民科学项目之一。通过允许观鸟者将鸟类的观察结果上传到在线数据库,eBird可以为物种分布建模提供有用的数据。然而,由于观鸟者的专业水平各不相同,提交给eBird的数据质量经常受到质疑。在本文中,我们开发了一个概率模型,称为占用-检测-专业知识(ODE)模型,该模型结合了向eBird提交数据的观鸟者的专业知识。研究表明,对观鸟者的专业知识进行建模可以提高预测某一地点某一鸟类观测结果的准确性。此外,我们还可以将ODE模型用于其他两项任务:根据观鸟者的eBird检查清单历史来预测他们的专业知识,以及识别新手难以发现的鸟类物种。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Experts and Novices in Citizen Science Data for Species Distribution Modeling
Citizen scientists, who are volunteers from the community that participate as field assistants in scientific studies [3], enable research to be performed at much larger spatial and temporal scales than trained scientists can cover. Species distribution modeling [6], which involves understanding species-habitat relationships, is a research area that can benefit greatly from citizen science. The eBird project [16] is one of the largest citizen science programs in existence. By allowing birders to upload observations of bird species to an online database, eBird can provide useful data for species distribution modeling. However, since birders vary in their levels of expertise, the quality of data submitted to eBird is often questioned. In this paper, we develop a probabilistic model called the Occupancy-Detection-Expertise (ODE) model that incorporates the expertise of birders submitting data to eBird. We show that modeling the expertise of birders can improve the accuracy of predicting observations of a bird species at a site. In addition, we can use the ODE model for two other tasks: predicting birder expertise given their history of eBird checklists and identifying bird species that are difficult for novices to detect.
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