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首页> 外文期刊>SAR and QSAR in Environmental Research >Predicting activities without computing descriptors: graph machines for QSAR
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Predicting activities without computing descriptors: graph machines for QSAR

机译:无需计算描述符即可预测活动:用于QSAR的图形机

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We describe graph machines, an alternative approach to traditional machine-learning-based QSAR, which circumvents the problem of designing, computing and selecting molecular descriptors. In that approach, which is similar in spirit to recursive networks, molecules are considered as structured data, represented as graphs. For each example of the data set, a mathematical function (graph machine) is built, whose structure reflects the structure of the molecule under consideration; it is the combination of identical parameterised functions, called "node functions" (e.g. a feedforward neural network). The parameters of the node functions, shared both within and across the graph machines, are adjusted during training with the "shared weights" technique. Model selection is then performed by traditional cross-validation. Therefore, the designer's main task consists in finding the optimal complexity for the node function. The efficiency of this new approach has been demonstrated in many QSAR or QSPR tasks, as well as in modelling the activities of complex chemicals (e.g. the toxicity of a family of phenols or the anti-HIV activities of HEPT derivatives). It generally outperforms traditional techniques without requiring the selection and computation of descriptors.
机译:我们描述了图机,这是传统的基于机器学习的QSAR的替代方法,它规避了设计,计算和选择分子描述符的问题。在本质上与递归网络类似的方法中,分子被视为结构化数据,以图形表示。对于数据集的每个示例,都建立了一个数学函数(制图机),其结构反映了所考虑分子的结构。它是相同的参数化函数(称为“节点函数”)(例如前馈神经网络)的组合。在训练机内和跨图机共享的节点功能的参数在训练过程中使用“共享权重”技术进行调整。然后通过传统的交叉验证执行模型选择。因此,设计人员的主要任务在于找到节点功能的最佳复杂度。在许多QSAR或QSPR任务中,以及在对复杂化学品的活性进行建模(例如,酚类的毒性或HEPT衍生物的抗HIV活性)方面,已经证明了这种新方法的效率。它通常优于传统技术,而无需选择和计算描述符。

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