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The prediction of carbon-13 NMR chemical shifts using ensembles of networks

机译:使用网络集合的碳-13 NMR化学位移的预测

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Ensembles of a multilayer network are set up to predict the carbon-13 nuclear magnetic resonance (C/sup 13/ NMR) chemical shifts of a series of monosubstituted benzenes. The descriptors (inputs) used are twelve structural-based vectors that correspond to the calculated Huckel and Gasteiger electron densities of the monosubstituted aromatic systems and four graphical descriptors that correspond to the numbers, of appearance of some specific structural features of the substitutents. The outputs are the C/sup 13/ NMR chemical shifts of the ipso, ortho, meta, and para carbons. A training set of 38 data was used and, after training, the neural network was tested for its ability to predict the C/sup 13/ NMR chemical shirts of 15 compounds not included in the training set. The authors demonstrated that the performance of artificial neural networks in C/sup 13/ NMR chemical shift prediction could be improved by (a) using both structural-based and graphical descriptors as input parameters, (b) pruning, and (c) combining the prediction from a number of networks. Furthermore, pruning the connection weights can also enable one to select the appropriate input variables.
机译:建立多层网络的集合以预测一系列单溶质苯的碳-13核磁共振(C / SUP 13 / NMR)化学换算。所使用的描述符(输入)是十二个结构的载体,其对应于计算的哈奇克和Gasteiger电子密度,单份芳族系统和四个图形描述符,所述图形描述符对应于所述数字的一些特定结构特征的外观。产出是IPSO,Ortho,Meta和Parbons的C / Sup 13 / NMR化学换算。使用38个数据的培训集,并在培训之后,测试神经网络的能力,以预测15个化合物的C / SUP 13 / NMR化学衬衫不包括在训练集中的15个化合物。作者证明,通过(a)可以使用基于结构的和图形描述符作为输入参数,(b)修剪和(c)组合的(a)来改善C / SUP 13 / NMR化学换档预测中的人工神经网络的性能。(a)来自许多网络的预测。此外,修剪连接权重也可以使其成为选择适当的输入变量。

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