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首页> 外文期刊>Journal of chemical information and modeling >Graph Convolutional Neural Networks as 'General-Purpose' Property Predictors: The Universality and Limits of Applicability
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Graph Convolutional Neural Networks as 'General-Purpose' Property Predictors: The Universality and Limits of Applicability

机译:图表卷积神经网络作为“通用”属性预测因子:适用性的普遍性和限制

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摘要

Nowadays the development of new functional materials/chemical compounds using machine learning (ML) techniques is a hot topic and includes several crucial steps, one of which is the choice of chemical structure representation. The classical approach of rigorous feature engineering in ML typically improves the performance of the predictive model, but at the same time, it narrows down the scope of applicability and decreases the physical interpretability of predicted results. In this study, we present graph convolutional neural networks (GCNNs) as an architecture that allows for successfully predicting the properties of compounds from diverse domains of chemical space, using a minimal set of meaningful descriptors. The applicability of GCNN models has been demonstrated by a wide range of chemical domain-specific properties. Their performance is comparable to state-of-the-art techniques; however, this architecture exempts from the need to carry out precise feature engineering.
机译:如今,使用机器学习(ML)技术的新功能材料/化学化合物的发展是一个热门话题,包括若干关键步骤,其中一个是化学结构表示的选择。 ML中严谨特征工程的经典方法通常改善预测模型的性能,但同时,它缩小了适用性的范围,并降低了预测结果的物理解释性。 在这项研究中,我们将图形卷积神经网络(GCNNS)作为架构,允许成功地预测化学空间不同的化学空间域的化合物的性质,使用最小的有意义的描述符。 GCNN模型的适用性已经通过各种化学结构域特性进行了证明。 它们的表现与最先进的技术相当; 但是,这种架构免除需要进行精确的特征工程。

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