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Evaluation of Deep Species Distribution Models Using Environment and Co-occurrences

机译:利用环境和共现性评估深层物种分布模型

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This paper presents an evaluation of several approaches of plants species distribution modeling based on spatial, environmental and co-occurrences data using machine learning methods. In particular, we re-evaluate the environmental convolutional neural network model that obtained the best performance of the GeoLifeCLEF 2018 challenge but on a revised dataset that fixes some of the issues of the previous one. We also go deeper in the analysis of co-occurrences information by evaluating a new model that jointly takes environmental variables and co-occurrences as inputs of an end-to-end network. Results show that the environmental models are the best performing methods and that there is a significant amount of complementary information between cooccurrences and environment. Indeed, the model learned on both inputs allows a significant performance gain compared to the environmental model alone.
机译:本文介绍了几种基于机器学习方法的基于空间,环境和共生数据的植物物种分布建模方法的评估。特别是,我们重新评估了环境卷积神经网络模型,该模型在GeoLifeCLEF 2018挑战赛中获得了最佳性能,但是在修订后的数据集上修复了前一个问题。通过评估将环境变量和共现作为端到端网络输入的新模型,我们还可以更深入地分析共现信息。结果表明,环境模型是执行效果最好的方法,并且在共现与环境之间存在大量的补充信息。实际上,与单独的环境模型相比,在两个输入上学习的模型都可以显着提高性能。

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