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Data Augmentation Approach in Bayesian Modelling of Presence-only Data

机译:贝叶斯建模的数据增强方法

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Ecologists are interested in prediction of potential distribution of species in suitable areas, essential for planning conservation and management strategies. Unfortunately, often the only available information in such studies is the true presence of the species at few locations of the study area and the associated environmental covariates over the entire area, referred as presence-only data. We propose a Bayesian approach to estimate logistic linear regressions adapted to presence-only data through the introduction of a random approximation of the correction factor in the adjusted logistic model that allows us to overcome the need to know a priori the prevalence of the species.
机译:生态学家对适用于规划保护和管理战略的潜在分布预测物种的潜在分布感兴趣。遗憾的是,通常唯一可用的信息在这些研究中的真实情况是在研究区域的几个位置以及整个区域上的相关环境协变量的位置的真实存在,称为仅存在的数据。我们提出了一种贝叶斯方法来估计逻辑线性回归,通过引入调整后的逻辑模型中的校正因子的随机逼近来估计仅存在数据的逻辑线性回归,该逻辑模型中的校正因子的随机逼近,该逻辑模型中允许我们克服需要知道先验的物种的普遍性。

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