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Mapping Wildlife Species Distribution With Social Media: Augmenting Text Classification With Species Names (Short Paper)

机译:利用社交媒体绘制野生生物物种分布图:利用物种名称增强文本分类(简短论文)

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Social media has considerable potential as a source of passive citizen science observations of the natural environment, including wildlife monitoring. Here we compare and combine two main strategies for using social media postings to predict species distributions: (i) identifying postings that explicitly mention the target species name and (ii) using a text classifier that exploits all tags to construct a model of the locations where the species occurs. We find that the first strategy has high precision but suffers from low recall, with the second strategy achieving a better overall performance. We furthermore show that even better performance is achieved with a meta classifier that combines data on the presence or absence of species name tags with the predictions from the text classifier.
机译:社交媒体作为被动的公民科学观察自然环境(包括野生生物监测)的来源具有巨大的潜力。在这里,我们比较并结合了两种使用社交媒体发布来预测物种分布的主要策略:(i)识别明确提及目标物种名称的发布;(ii)使用利用所有标签构建位置模型的文本分类器该物种发生。我们发现第一种策略具有较高的精度,但召回率较低,而第二种策略可实现更好的整体性能。我们进一步表明,使用元分类器可以实现更好的性能,该元分类器将物种名称标签存在或不存在的数据与文本分类器的预测相结合。

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