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The Effects of Sampling Bias and Model Complexity on the Predictive Performance of MaxEnt Species Distribution Models

机译:抽样偏差和模型复杂度对MaxEnt物种分布模型的预测性能的影响

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摘要

Species distribution models (SDMs) trained on presence-only data are frequently used in ecological research and conservation planning. However, users of SDM software are faced with a variety of options, and it is not always obvious how selecting one option over another will affect model performance. Working with MaxEnt software and with tree fern presence data from New Zealand, we assessed whether (a) choosing to correct for geographical sampling bias and (b) using complex environmental response curves have strong effects on goodness of fit. SDMs were trained on tree fern data, obtained from an online biodiversity data portal, with two sources that differed in size and geographical sampling bias: a small, widely-distributed set of herbarium specimens and a large, spatially clustered set of ecological survey records. We attempted to correct for geographical sampling bias by incorporating sampling bias grids in the SDMs, created from all georeferenced vascular plants in the datasets, and explored model complexity issues by fitting a wide variety of environmental response curves (known as “feature types” in MaxEnt). In each case, goodness of fit was assessed by comparing predicted range maps with tree fern presences and absences using an independent national dataset to validate the SDMs. We found that correcting for geographical sampling bias led to major improvements in goodness of fit, but did not entirely resolve the problem: predictions made with clustered ecological data were inferior to those made with the herbarium dataset, even after sampling bias correction. We also found that the choice of feature type had negligible effects on predictive performance, indicating that simple feature types may be sufficient once sampling bias is accounted for. Our study emphasizes the importance of reducing geographical sampling bias, where possible, in datasets used to train SDMs, and the effectiveness and essentialness of sampling bias correction within MaxEnt.
机译:根据仅存在数据训练的物种分布模型(SDM)经常用于生态研究和保护规划。但是,SDM软件的用户面临着各种各样的选择,而且并不总是很明显地选择一个选择来影响模型性能。通过使用MaxEnt软件和来自新西兰的蕨类植物存在数据,我们评估了(a)选择校正地理采样偏差和(b)使用复杂的环境响应曲线是否对拟合优度有很大影响。 SDM接受了从在线生物多样性数据门户网站获取的树木蕨类植物数据的培训,其来源有两个,它们的大小和地理抽样偏差有所不同:一整套分布广泛的小标本集标本和一整套空间分布的大型生态调查记录集。我们尝试通过将采样偏差网格合并到SDM中来校正地理采样偏差,该SDM是从数据集中所有地理参考的维管植物创建的,并且通过拟合各种环境响应曲线(在MaxEnt中称为“特征类型”)来探索模型复杂性问题)。在每种情况下,通过使用独立的国家数据集来验证SDM,通过比较预测的范围图与树蕨的存在与否来评估拟合优度。我们发现校正地理采样偏差导致拟合优度的重大改进,但并不能完全解决问题:即使在采样偏差校正之后,使用聚类生态数据所做的预测也不如使用植物标本室数据集所做的预测。我们还发现,特征类型的选择对预测性能的影响可忽略不计,这表明,一旦考虑了采样偏差,简单的特征类型就足够了。我们的研究强调了在可能的情况下,在用于训练SDM的数据集中减少地理采样偏差的重要性,以及MaxEnt内采样偏差校正的有效性和必要性。

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