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首页> 外文期刊>Biological Conservation >Citizen science and field survey observations provide comparable results for mapping Vancouver Island White-tailed Ptarmigan (Lagopus leucura saxatilis) distributions
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Citizen science and field survey observations provide comparable results for mapping Vancouver Island White-tailed Ptarmigan (Lagopus leucura saxatilis) distributions

机译:公民科学和现场调查观察结果为绘制温哥华岛白尾雷鸟(Lagopus leucura saxatilis)分布图提供了可比的结果

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Wildlife in alpine ecosystems can be elusive and difficult to survey, yet knowledge of their distributions is critical as these habitats are threatened by climate change. Opportunistic "citizen science" observations submitted by hikers in remote alpine regions can be valuable, as coverage can be extensive compared to scientific field surveys. Here, we compare the performance of two regression and three machine learning statistical modeling approaches and an ensemble model to predict the distribution of the Vancouver Island subspecies of White-tailed Ptarmigan (Lagopus leucura saxatilis) based on two datasets: (1) field survey observations from radio-telemetry and call-playbacks, and (2) opportunistic citizen science observations submitted by hikers. Predictions of suitable habitat for the Vancouver Island subspecies varied from 370 to 1039 km(2) based on field survey observations and from 404 to 1354 km(2) based on public observations. All models had fair accuracy (kappa > 0.45) when tested on an independent dataset, but Generalized Linear Models and Generalized Additive Models tended to over-predict ptarmigan occurrence, had the lowest accuracy, and were most sensitive to the type of response data used. All the machine learning modeling techniques differed little between the datasets. These comparable results are encouraging for the continued use of citizen science monitoring programs, which can save both time and expense while involving and educating the public about threatened species. We advocate the use of opportunistic citizen science data and machine learning modeling techniques (Random Forest, Boosted Regression Trees, and Maxent) for predicting alpine vertebrate species distributions. (C) 2014 Elsevier Ltd. All rights reserved.
机译:高山生态系统中的野生生物可能难以捉摸且难以调查,但是了解其分布至关重要,因为这些栖息地受到气候变化的威胁。偏远高山地区的徒步旅行者提交的机会性“公民科学”观察可能是有价值的,因为与科学领域的调查相比,其覆盖范围很广。在这里,我们基于两个数据集比较两种回归和三种机器学习统计建模方法以及一个集成模型的性能,以预测白尾雷鸟(Lagopus leucura saxatilis)的温哥华岛亚种的分布:(1)实地调查观察来自无线电遥测和呼叫回放,以及(2)徒步旅行者提交的机会主义公民科学观察。根据实地调查观察,对温哥华岛亚种合适栖息地的预测范围从370到1039 km(2),根据公众观察发现的范围从404到1354 km(2)。当在独立的数据集上进行测试时,所有模型都具有相当的准确性(kappa> 0.45),但是广义线性模型和广义加性模型倾向于过度预测雷鸟的发生,具有最低的准确性,并且对所使用的响应数据类型最敏感。所有的机器学习建模技术在数据集之间差异很小。这些可比的结果对于继续使用公民科学监测计划是令人鼓舞的,这可以节省时间和费用,同时让公众了解和了解受威胁物种。我们提倡使用机会公民科学数据和机器学习建模技术(随机森林,增强回归树和Maxent)来预测高山脊椎动物的分布。 (C)2014 Elsevier Ltd.保留所有权利。

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