Ab'/> Revisiting probabilistic neural networks: a comparative study with support vector machines and the microhabitat suitability for the Eastern Iberian chub ( <ce:italic>Squalius valentinus</ce:italic>)
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Revisiting probabilistic neural networks: a comparative study with support vector machines and the microhabitat suitability for the Eastern Iberian chub ( Squalius valentinus)

机译:重新审视概率神经网络:具有支持向量机的比较研究以及东部伊伯利亚杂铜的微野签名适合性( squalius valentinus

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AbstractProbabilistic Neural Networks (PNNs) and Support Vector Machines (SVMs) are flexible classification techniques suited to render trustworthy species distribution and habitat suitability models. Although several alternatives to improve PNNs' reliability and performance and/or to reduce computational costs exist, PNNs are currently not well recognised as SVMs because the SVMs were compared with standard PNNs. To rule out this idea, the microhabitat suitability for the Eastern Iberian chub (Squalius valentinusDoadrio & Carmona, 2006) was modelled with SVMs and four types of PNNs (homoscedastic, heteroscedastic, cluster and enhanced PNNs); all of them optimised with Differential Evolution. The fitness function and several performance criteria (correctly classified instances, true skill statistic, specificity and sensitivity) and partial dependence plots were used to assess respectively the performance and reliability of each habitat suitability model. Heteroscedastic and enhanced PNNs achieved the highest performance in every index but specificity. However, these two PNNs rendered ecologically unreliable partial dependence plots. Conversely, homoscedastic and cluster PNNs rendered ecologically reliable partial dependence plots. Thus, Eastern Iberian chub proved to be a eurytopic species, presenting the highest suitability in microhabitats with cover present, low flow velocity (approx. 0.3m/s), intermediate depth (approx. 0.6m) and fine gravel (64–256mm). PNNs outperformed SVMs; thus, based on the results of the cluster PNN, which also showed high values of the performance criteria, we would advocate a combination of approaches (e.g., cluster & hetero
机译:<![cdata [ 抽象 概率神经网络(PNN)和支持向量机(SVM)是适合呈现值得信赖的物种分布的灵活分类技术和栖息地适用性模型。尽管有几种改善PNNS的可靠性和性能和/或降低计算成本的替代方案,但PNN目前不受SVMS不充分识别,因为将SVM与标准PNN进行比较。为了排除这个想法,对东部伊伯利亚杂耍的微野签名适合( squalius fallentinus doadrio&carmona,2006)用SVM和四种类型的PNN(Homoscedic,Heterosc用,群集和增强的pnns);所有这些都以差分演变优化。使用健身功能和若干性能标准(正确分类的情况,真正的技能统计,特异性和灵敏度)和部分依赖性地块分别用于评估每个栖息地适用性模型的性能和可靠性。异源和增强的PNN在每个指数中实现了最高性能,而是特异性。然而,这两个PNN呈现了生态上不可靠的部分依赖性地块。相反,同性恋和群集PNN呈现了生态可靠的部分依赖性图。因此,东部伊伯利亚鲤被证明是一种EURYTOPIC物种,呈现出微藻的最高适用性,具有覆盖物,低流速(约0.3m / s),中间深度(约0.6米)和细砂砾(64-256mm) 。 pnns优于SVM;因此,基于集群PNN的结果,该结果也显示出高值的性能标准,我们将倡导方法的组合(例如,群集和异质

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