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Prioritizing the risk of plant pests by clustering methods; self-organising maps, k-means and hierarchical clustering

机译:通过聚类方法优先考虑植物有害生物的风险;自组织图,k均值和层次聚类

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For greater preparedness, pest risk assessors are required to prioritise long lists of pest species with potential to establish and cause significant impact in an endangered area. Such prioritization is often qualitative, subjective, and sometimes biased, relying mostly on expert and stakeholder consultation. In recent years, cluster based analyses have been used to investigate regional pest species assemblages or pest profiles to indicate the risk of new organism establishment. Such an approach is based on the premise that the co-occurrence of well-known global invasive pest species in a region is not random, and that the pest species profile or assemblage integrates complex functional relationships that are difficult to tease apart. In other words, the assemblage can help identify and prioritise species that pose a threat in a target region. A computational intelligence method called a Kohonen self-organizing map (SOM), a type of artificial neural network, was the first clustering method applied to analyse assemblages of invasive pests. The SOM is a well known dimension reduction and visualization method especially useful for high dimensional data that more conventional clustering methods may not analyse suitably. Like all clustering algorithms, the SOM can give details of clusters that identify regions with similar pest assemblages, possible donor and recipient regions. More important, however SOM connection weights that result from the analysis can be used to rank the strength of association of each species within each regional assemblage. Species with high weights that are not already established in the target region are identified as high risk. However, the SOM analysis is only the first step in a process to assess risk to be used alongside or incorporated within other measures. Here we illustrate the application of SOM analyses in a range of contexts in invasive species risk assessment, and discuss other clustering methods such as k-means, hierarchical clustering and the incorporation of the SOM analysis into criteria based approaches to assess pest risk.
机译:为了更好地做好准备,要求病虫害风险评估者确定一长串有害生物种类的优先次序,这些清单可能会在濒危地区造成重大影响。这种优先次序通常是定性的,主观的,有时甚至是有偏见的,主要取决于专家和利益相关者的咨询。近年来,基于聚类的分析已用于调查区域有害生物物种组合或有害生物概况,以表明建立新生物的风险。这种方法是基于这样一个前提,即一个区域内共同存在的全球入侵性有害生物并不是随机发生的,并且有害生物的概况或组合整合了难以分离的复杂功能关系。换句话说,这种组合可以帮助识别和确定对目标区域构成威胁的物种的优先级。一种称为Kohonen自组织图(SOM)的计算智能方法是一种人工神经网络,它是第一种用于分析侵入性有害生物组合的聚类方法。 SOM是众所周知的降维和可视化方法,特别适用于更常规的聚类方法可能无法适当分析的高维数据。像所有聚类算法一样,SOM可以提供聚类的详细信息,以识别具有相似害虫组合的区域,可能的施主和受主区域。然而,更重要的是,由分析得出的SOM连接权重可以用于对每个区域组合中每个物种的关联强度进行排名。目标区域中尚未建立的具有高权重的物种被标识为高风险。但是,SOM分析只是评估与其他措施一起使用或并入其他措施的风险的第一步。在这里,我们说明了SOM分析在入侵物种风险评估的一系列环境中的应用,并讨论了其他聚类方法,例如k均值,层次聚类以及将SOM分析纳入基于标准的评估害虫风险的方法。

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