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Applications of the self-organising feature map neural network in community data analysis

机译:自组织特征图神经网络在社区数据分析中的应用

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Freedom from restrictive assumptions that underlie many quantitative techniques make neural networks attractive for ecological investigations. The potential of the self organising feature map (SOFM) neural network for the classification, and to a lesser extent, ordination of vegetation data was investigated. The SOFM output was shown to correspond closely to classifications obtained from three alternative clustering algorithms, with similar samples located close together in the SOFM output space. Moreover, the classes were distributed spatially in the SOFM output by their relative similarity. This was evident with comparison against classifications derived at various levels of a hierarchical classification that revealed that the classes aggregated during each step of the hierarchical classification also tended to lie close together in the SOFM output space. As a consequence, the spatial distribution of classes in the SOFM output may represent the data in a manner similar to an ordination analysis. Some evidence for this inference is provided by comparison with the results of a standard ordination analysis.
机译:不受许多定量技术基础的限制性假设的约束,使神经网络对生态学研究具有吸引力。自组织特征图(SOFM)神经网络用于分类的潜力以及在较小程度上研究了植被数据的排序的潜力。结果表明,SOFM输出与从三种替代聚类算法获得的分类非常接近,相似的样本在SOFM输出空间中排列在一起。而且,这些类通过它们的相对相似性在空间上分布在SOFM输出中。通过与在层次分类的各个级别上得出的分类进行比较,可以明显看出这一点,它表明,在层次分类的每个步骤中聚合的类在SOFM输出空间中也趋向于靠在一起。结果,SOFM输出中类的空间分布可能以类似于排序分析的方式表示数据。通过与标准排序分析的结果进行比较,可以提供此推断的一些证据。

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