QMLGJul 8, 2022

Graph-based Molecular Representation Learning

arXiv:2207.04869v3100 citationsh-index: 75
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers in machine learning and chemistry, but it is incremental as it synthesizes existing work without introducing new methods.

This survey systematically reviews graph-based molecular representation learning techniques, categorizing methods and discussing chemical applications, benchmarks, and datasets to facilitate future research in this area.

Molecular representation learning (MRL) is a key step to build the connection between machine learning and chemical science. In particular, it encodes molecules as numerical vectors preserving the molecular structures and features, on top of which the downstream tasks (e.g., property prediction) can be performed. Recently, MRL has achieved considerable progress, especially in methods based on deep molecular graph learning. In this survey, we systematically review these graph-based molecular representation techniques, especially the methods incorporating chemical domain knowledge. Specifically, we first introduce the features of 2D and 3D molecular graphs. Then we summarize and categorize MRL methods into three groups based on their input. Furthermore, we discuss some typical chemical applications supported by MRL. To facilitate studies in this fast-developing area, we also list the benchmarks and commonly used datasets in the paper. Finally, we share our thoughts on future research directions.

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