This paper introduces Hierarchical Molecular Graph Self-supervised Learning (HiMol), a pre-training framework for learning molecular representations to predict properties. HiMol uses a Hierarchical Molecular Graph Neural Network (HMGNN) to encode motif structures and extract hierarchical representations. Multi-level Self-supervised Pre-training (MSP) employs generative and predictive tasks as self-supervised signals. Results on classification and regression tasks demonstrate HiMol's effectiveness, and visualizations show its ability to capture chemical semantic information.
Publisher
Communications Chemistry
Published On
Feb 17, 2023
Authors
Xuan Zang, Xianbing Zhao, Buzhou Tang
Tags
Molecular Graph Neural Network
Self-supervised Learning
Hierarchical Representations
Chemical Properties
Generative Tasks
Predictive Tasks
Motif Structures
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