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Artificial neural networks to predict daylily hybrids

机译:人工神经网络预测黄花菜杂种

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Artificial Neural Networks (ANN) were employed to predict daylily (Hemerocalli spp.) hybrids from known characteristics of parents used in hybridization. Features such as height, diameter, foliage, blooming habit, pioidy, blooming sequence were included in the initial training and testing. Data pre-processing was performed to meet the format requirements of ANN. Backpropagation (BP), Kalman filter (KF) learning algorithms were used to develop nonparametric models between the input and output data sets. These networks were compared with traditional multiple linear regression models. Prediction plots for both height and diameter indicated that the regression model had a better accuracy in predicting unseen patterns. However, ANN models were able to more robustly generalize and interpolate unseen patterns within the domain of training.
机译:利用人工神经网络(ANN)从杂交中使用的亲本的已知特征预测黄花菜(Hemerocalli spp。)杂种。最初的培训和测试中包括高度,直径,枝叶,开花习性,叶片状,开花顺序等特征。进行数据预处理以满足ANN的格式要求。反向传播(BP),卡尔曼滤波器(KF)学习算法用于开发输入和输出数据集之间的非参数模型。将这些网络与传统的多元线性回归模型进行了比较。高度和直径的预测图表明,回归模型在预测看不见的图案方面具有更好的准确性。但是,人工神经网络模型能够在训练领域内更强大地概括和内插看不见的模式。

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