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A comparison of artificial neural networks and random forests to predict native fish species richness in Mediterranean rivers

机译:人工神经网络与随机森林的比较,以预测地中海河流中本地鱼类的丰富程度

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Machine learning (ML) techniques have become important to support decision making in management and conservation of freshwater aquatic ecosystems. Given the large number of ML techniques and to improve the understanding of ML utility in ecology, it is necessary to perform comparative studies of these techniques as a preparatory analysis for future model applications. The objectives of this study were (i) to compare the reliability and ecological relevance of two predictive models for fish richness, based on the techniques of artificial neural networks (ANN) and random forests (RF) and (ii) to evaluate the conformity in terms of selected important variables between the two modelling approaches. The effectiveness of the models were evaluated using three performance metrics: the determination coefficient (R2), the mean squared error (MSE) and the adjusted determination coefficient (R2adj and both models were developed using a k-fold crossvalidation procedure. According to the results, both techniques had similar validation performance (R2?=?68% for RF and R2?=?66% for ANN). Although the two methods selected different subsets of input variables, both models demonstrated high ecological relevance for the conservation of native fish in the Mediterranean region. Moreover, this work shows how the use of different modelling methods can assist the critical analysis of predictions at a catchment scale.
机译:机器学习(ML)技术对于支持淡水水生生态系统的管理和保护决策至关重要。考虑到大量的机器学习技术,并且为了提高对机器学习在生态学中的效用的理解,有必要对这些技术进行比较研究,作为对未来模型应用的准备分析。这项研究的目的是(i)基于人工神经网络(ANN)和随机森林(RF)的技术,比较两种鱼类丰富度预测模型的可靠性和生态相关性;以及(ii)评估鱼类多样性的一致性。两种建模方法之间选择的重要变量的术语。使用三个性能指标评估模型的有效性:确定系数(R2),均方误差(MSE)和调整后的确定系数(R2adj),并且两个模型均使用k倍交叉验证程序进行开发。 ,这两种技术的验证性能相似(RF的R2?=?68 %和ANN的R2?=?66 %)。尽管这两种方法选择了不同的输入变量子集,但两种模型都显示出与保护水生动物具有高度的生态相关性此外,这项工作还展示了如何使用不同的建模方法可以帮助对流域尺度的预测进行关键分析。

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