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Geographic selection bias of occurrence data influences transferability of invasive Hydrilla verticillata distribution models

机译:发生数据的地理选择偏差影响侵入性黑藻分布模型的可传递性

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AbstractDue to socioeconomic differences, the accuracy and extent of reporting on the occurrence of native species differs among countries, which can impact the performance of species distribution models. We assessed the importance of geographical biases in occurrence data on model performance using Hydrilla verticillata as a case study. We used Maxent to predict potential North American distribution of the aquatic invasive macrophyte based upon training data from its native range. We produced a model using all available native range occurrence data, then explored the change in model performance produced by omitting subsets of training data based on political boundaries. We also compared those results with models trained on data from which a random sample of occurrence data was omitted from across the native range. Although most models accurately predicted the occurrence of H. verticillata in North America (AUC  0.7600), data omissions influenced model predictions. Omitting data based on political boundaries resulted in larger shifts in model accuracy than omitting randomly selected occurrence data. For well-documented species like H. verticillata, missing records from single countries or ecoregions may minimally influence model predictions, but for species with fewer documented occurrences or poorly understood ranges, geographic biases could misguide predictions. Regardless of focal species, we recommend that future species distribution modeling efforts begin with a reflection on potential spatial biases of available occurrence data. Improved biodiversity surveillance and reporting will provide benefit not only in invaded ranges but also within under-reported and unexplored native ranges.
机译:摘要由于社会经济差异,各国之间关于原生物种发生的报告的准确性和程度不同,这可能会影响物种分布模型的性能。我们使用Hydrilla verticillata作为案例研究,评估了模型表现发生数据中地理偏见的重要性。我们使用Maxent根据来自本机范围的训练数据来预测水生入侵大型植物在北美的潜在分布。我们使用所有可用的本机范围发生数据创建了一个模型,然后探索了通过基于政治边界而省略训练数据子集而产生的模型性能的变化。我们还将这些结果与在数据上训练的模型进行了比较,从该模型中,本机范围内的随机出现数据样本被省略。尽管大多数模型都能准确预测北美的网状螺旋藻的发生(AUC> 0.7600),但数据遗漏影响了模型的预测。与省略随机选择的发生数据相比,基于政治边界的数据遗漏导致模型准确性的更大变化。对于有充分记录的物种,如H.verticillata,单个国家或生态区域的缺少记录可能对模型预测的影响最小,但是对于记录较少的物种或已知范围不广的物种,地理偏见可能会误导预测。无论是哪种重点物种,我们建议未来的物种分布建模工作都应从对可用事件数据的潜在空间偏差进行反思开始。改进的生物多样性监测和报告不仅将在入侵范围内,而且在未报告和未开发的原生范围内将带来惠益。

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