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Effects of missing data on neural network identification of biological taxa: RBF network discrimination of phytoplankton from flow cytometry data

机译:缺失数据对生物分类群神经网络鉴定的影响:RBF网络流式细胞术数据的植物植物辨别

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Missing parameters are a common problem when trying to make biological identifications. Different ways of estimating missing parameter values are examined and identification success compared with that achieved when no parameters were missing andby networks trained without inclusion of the particular missing parameter, using radial basis function networks trained to discriminate 19 phytoplankton species on the basis of 11 flow cytometric parameters. Omitting each parameter singly from bothtraining and test data sets resulted in only slightly reduced overall identification success; using maximum likelihood estimates of missing parameters gave only slightly less overall success than did nets trained on data sets with that parameter missing.
机译:尝试制定生物识别时缺少参数是一个常见的问题。估计缺失参数值的不同方式被检查和识别成功与在没有包含特定缺失参数的网络没有缺失的网络缺失的网络中缺少参数时,使用径向基函数网络在11个流式细胞仪的基础上辨别19种植物缺陷种类参数。单独省略每个参数,两种参数,测试数据集只是略微减少总体识别成功;使用缺失参数的最大似然估计不会略低于略少的成功,而不是在数据集上培训的缺陷缺少该参数。

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