化学空间
计算机科学
图形
分子图
财产(哲学)
分子工程
材料科学
生物系统
人工智能
药物发现
化学
化学物理
理论计算机科学
纳米技术
哲学
认识论
生物
生物化学
作者
Seongok Ryu,Jaechang Lim,Samin Hong,Woo Youn Kim
出处
期刊:Cornell University - arXiv
日期:2018-01-01
被引量:38
标识
DOI:10.48550/arxiv.1805.10988
摘要
Molecular structure-property relationships are key to molecular engineering for materials and drug discovery. The rise of deep learning offers a new viable solution to elucidate the structure-property relationships directly from chemical data. Here we show that the performance of graph convolutional networks (GCNs) for the prediction of molecular properties can be improved by incorporating attention and gate mechanisms. The attention mechanism enables a GCN to identify atoms in different environments. The gated skip-connection further improves the GCN by updating feature maps at an appropriate rate. We demonstrate that the resulting attention- and gate-augmented GCN could extract better structural features related to a target molecular property such as solubility, polarity, synthetic accessibility and photovoltaic efficiency compared to the vanilla GCN. More interestingly, it identified two distinct parts of molecules as essential structural features for high photovoltaic efficiency, and each of them coincided with the areas of donor and acceptor orbitals for charge-transfer excitations, respectively. As a result, the new model could accurately predict molecular properties and place molecules with similar properties close to each other in a well-trained latent space, which is critical for successful molecular engineering.
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