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Prediction of soil adsorption coefficient based on deep recursive neural network

机译:基于深递归神经网络的土壤吸附系数预测

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AbstractIt is expensive and time consuming to measure soil adsorption coefficient (logKoc) of compounds using traditional methods, and some existing models show lower accuracies. To solve these problems, a deep learning (DL) method based on undirected graph recursive neural network (UG-RNN) is proposed in this paper. Firstly, the structures of molecules are represented by directed acyclic graphs (DAG) using RNN model; after that when a number of such neural networks are bundled together, they form a multi-level and weight sharing deep neural network to extract the features of molecules; Third, logKoc values of compounds have been predicted using back-propagation neural network. The experimental results show that the UG-RNN model achieves a better prediction effect than some shallow models. After five-fold cross validation, the root mean square error (RMSE) value is 0.46, the average absolute error (AAE) value is 0.35, and the square correlation coefficient (R2) value is 0.86.]]>
机译:<![CDATA [<标题>抽象 使用传统方法测量化合物的土壤吸附系数(LOGKOC)是昂贵且耗时的,但一些现有模型显示出较低的精度。为了解决这些问题,本文提出了一种基于无向递归神经网络(UG-RNN)的深度学习(DL)方法。首先,分子的结构由使用RNN模型的有向非循环图(DAG)表示的结构;之后,当许多这样的神经网络一起捆绑在一起时,它们形成了一个多级和重量,共享深神经网络以提取分子的特征;第三,使用反向传播神经网络预测了化合物的Logkoc值。实验结果表明,UG-RNN模型达到了比浅模型更好的预测效果。在五倍交叉验证之后,根均线误差(RMSE)值为0.46,平均绝对误差(AAE)值为0.35,方形相关系数(<重点类型=“斜体”> R <上标> 2 )值为0.86。]>

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