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Simple neural network reveals unexpected patterns of bird species richness in forest fragments

机译:简单的神经网络揭示了森林碎片中鸟类物种丰富度的意外模式

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摘要

The study of links between bird species richness and forest fragmentation contributes to a better understanding of landscape biodiversity. Difficulties arise from the necessity to deal with multiple non-linear relationships between the involved variables. Neural network models provide an interesting solution thanks to their internal set of non-linear neuron-like components. Their ability is well established for prediction, but their complex structure limits the understanding of underlying processes.To open the 'black box' and get a more transparent 'glass box' model, we selected a simple neural network (2 inputs, 1 hidden layer with 3 neurons and 1 output neuron), that improves the prediction of birds species richness (lower root mean square error)compared to linear, log-linear and logistic models, and simple enough to analyze its internal components and identify patterns in the data. The first hidden neuron provided a sigmoid relationship related to the forest area, the second was like a Booleanoperator separating two groups according to the distance to the nearest source forest larger than 100 ha, and the third acted on the smallest isolated woodlots. We revealed a group of isolated woodlots with a higher species richness than less isolated woodlots for a given forest area. This result, unexpected according to the literature, was not obvious in the raw data, and could be explained by a regional differentiation in fragmentation history. Our neural network showed its ability to improve prediction accuracy in respect to other models, to remain ecologically understandable and to give new insights into data exploration.
机译:对鸟类物种丰富度与森林破碎化之间联系的研究有助于更好地理解景观生物多样性。困难在于必须处理所涉及变量之间的多个非线性关系。神经网络模型提供了一个有趣的解决方案,这要归功于其内部的一组非线性神经元样组件。他们具有很好的预测能力,但复杂的结构限制了对底层过程的理解。要打开``黑盒子''并获得更透明的``玻璃盒子''模型,我们选择了一个简单的神经网络(2个输入,1个隐藏层) (具有3个神经元和1个输出神经元),与线性,对数线性和逻辑模型相比,改进了鸟类物种丰富度的预测(较低的均方根误差),并且足够简单地分析其内部成分并识别数据中的模式。第一个隐藏的神经元提供了与森林面积有关的乙状结肠关系,第二个就像一个布尔运算符,根据到距离最近的原始森林大于100公顷的距离将两组分开,而第三个则作用于最小的孤立林地。我们发现,对于给定的森林面积,一群孤立的林地的物种丰富度要高于更少的孤立林地。根据文献的预料,该结果在原始数据中并不明显,并且可以通过碎片历史的区域差异来解释。我们的神经网络显示出能够提高相对于其他模型的预测准确性,保持生态可理解性并为数据探索提供新见解的能力。

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