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Pruning neural network for architecture optimization applied to near-infrared reflectance spectroscopic measurements. Determination of the nitrogen content in wheat leaves

机译:修剪架构优化神经网络应用于近红外反射光谱测量。小麦叶中氮含量的测定

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摘要

The pruning neural network, based on the algorithm called optimum brain surgeon, was used for network architecture optimization. This network pruning procedure was applied for estimating the nitrogen contents in wheat leaves, using near-infrared diffuse reflectance spectroscopy. The results obtained with pruning were compared with those obtained by using ordinary procedures with neural networks, partial least squares, polynomial partial least squares and neural networks/partial least squares methodologies. Comparison of the results with those obtained by the conventional Kjeldahl method showed that the results with pruning neural networks were as good as those with ordinary neural networks and with PLS/neural networks, but better than those with the other methodologies. Although the comparison was performed for one data set, the pruning procedure has the advantage of introducing an automatic architecture optimization, which is cumbersome when performed by the other neural network procedures used in this work, generating a simplified model with better generalization abilities.
机译:基于称为最佳脑外科医生的算法的修剪神经网络用于网络架构优化。使用近红外漫射反射光谱施加该网络修剪程序以估计小麦叶中的氮含量。将用普通方法与神经网络,局部最小二乘,多项式最小二乘和神经网络/部分最小二乘法进行比较而获得的结果。通过传统的KJELDAHL方法获得的结果的比较表明,用普通神经网络的结果与普通神经网络和PLS /神经网络的结果相比,但是与其他方法更好。尽管对一个数据集进行了比较,但是修剪过程具有引入自动架构优化的优点,这些优点是当由本作工作中使用的其他神经网络过程执行的自动架构优化,产生具有更好概括能力的简化模型。

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