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Mining Citizen Science Data to Predict Prevalence of Wild Bird Species

机译:挖掘公民科学数据以预测野生鸟类的流行

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摘要

The Cornell Laboratory of Ornithology's mission is to interpret and conserve the earth's biological diversity through research, education, and citizen science focused on birds. Over the years, the Lab has accumulated one of the largest and longest-running collections of environmental data sets in existence. The data sets are not only large, but also have many attributes, contain many missing values, and potentially are very noisy. The ecologists are interested in identifying which features have the strongest effect on the distribution and abundance of bird species as well as describing the forms of these relationships. We show how data mining can be successfully applied, enabling the ecologists to discover unanticipated relationships. We compare a variety of methods for measuring attribute importance with respect to the probability of a bird being observed at a feeder and present initial results for the impact of important attributes on bird prevalence.
机译:康奈尔大学鸟类学实验室的任务是通过针对鸟类的研究,教育和公民科学来解释和保护地球的生物多样性。多年来,该实验室已积累了现有的最大,运行时间最长的环境数据集之一。数据集不仅很大,而且具有许多属性,包含许多缺失值,并且可能非常嘈杂。生态学家对确定哪些特征对鸟类的分布和丰富度影响最大,以及描述这些关系的形式感兴趣。我们展示了如何成功地应用数据挖掘,使生态学家能够发现意料之外的关系。我们比较了各种测量属性重要性的方法,这些方法涉及在喂食器上观察到鸟类的可能性,并提出了重要属性对鸟类流行率的影响的初步结果。

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