Species distribution models (SDMs), which aim to predict species occurrence based on environmental variables, are widely used to monitor and respond to biodiversity change. Recent deep learning advances for SDMs have been shown to perform well on complex and heterogeneous datasets, but their effectiveness remains limited by spatial biases in the data. In this paper, we revisit deep SDMs from a Bayesian perspective and introduce BATIS, a novel and practical framework wherein prior predictions are updated iteratively using limited observational data. Models must appropriately capture both aleatoric and epistemic uncertainty to effectively combine fine-grained local insights with broader ecological patterns. We benchmark an extensive set of uncertainty quantification approaches on a novel dataset including citizen science observations from the eBird platform. Our empirical study shows how Bayesian deep learning approaches can greatly improve the reliability of SDMs in data-scarce locations, which can contribute to ecological understanding and conservation efforts.
翻译:物种分布模型旨在基于环境变量预测物种出现情况,被广泛用于监测和应对生物多样性变化。近期针对物种分布模型的深度学习进展在复杂异质数据集上表现出色,但其有效性仍受数据空间偏差的限制。本文从贝叶斯视角重新审视深度物种分布模型,提出BATIS——一种新颖实用的框架,该框架利用有限观测数据迭代更新先验预测。模型需同时恰当捕捉偶然不确定性和认知不确定性,以有效融合细粒度局部观测与宏观生态格局。我们在包含eBird平台公民科学观测数据的新数据集上,对多种不确定性量化方法进行了系统性基准测试。实证研究表明,贝叶斯深度学习方法能显著提升数据稀缺区域物种分布模型的可靠性,从而为生态学认知与保护行动提供支持。