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Predictor species: Improving assessments of rare species occurrence by modeling environmental co‐responses

机译:预测物种:通过对环境共同响应进行建模来改进对稀有物种发生的评估

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摘要

Designing an effective conservation strategy requires understanding where rare species are located. Because rare species can be difficult to find, ecologists often identify other species called conservation surrogates that can help inform the distribution of rare species. Species distribution models typically rely on environmental data when predicting the occurrence of species, neglecting the effect of species' co‐occurrences and biotic interactions. Here, we present a new approach that uses Bayesian networks to improve predictions by modeling environmental co‐responses among species. For species from a European peat bog community, our approach consistently performs better than single‐species models and better than conventional multi‐species approaches that include the presence of nontarget species as additional independent variables in regression models. Our approach performs particularly well with rare species and when calibration data are limited. Furthermore, we identify a group of “predictor species” that are relatively common, insensitive to the presence of other species, and can be used to improve occurrence predictions of rare species. Predictor species are distinct from other categories of conservation surrogates such as umbrella or indicator species, which motivates focused data collection of predictor species to enhance conservation practices.
机译:设计有效的保护策略需要了解稀有物种的位置。由于稀有物种可能很难找到,因此生态学家通常会发现其他物种,称为保护替代物,可以帮助了解稀有物种的分布。物种分布模型在预测物种的发生时通常依赖于环境数据,而忽略了物种共生和生物相互作用的影响。在这里,我们提出了一种新的方法,该方法使用贝叶斯网络通过对物种之间的环境共同响应进行建模来改善预测。对于来自欧洲泥炭沼泽社区的物种,我们的方法始终比单物种模型和传统多物种方法表现更好,后者包括将非目标物种作为回归模型中的附加自变量存在。当稀有物种且校准数据有限时,我们的方法表现特别出色。此外,我们确定了一组相对常见,对其他物种不敏感的“预测物种”,可用于改善稀有物种的发生预测。预测物种不同于其他种类的保护替代物(例如保护伞物种或指示物种),这可以激发对预测物种的集中数据收集以增强保护实践。

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