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Analyzing Learned Molecular Representations for Property Prediction

Machine Learning 2019-11-22 v5 Machine Learning

Abstract

Advancements in neural machinery have led to a wide range of algorithmic solutions for molecular property prediction. Two classes of models in particular have yielded promising results: neural networks applied to computed molecular fingerprints or expert-crafted descriptors, and graph convolutional neural networks that construct a learned molecular representation by operating on the graph structure of the molecule. However, recent literature has yet to clearly determine which of these two methods is superior when generalizing to new chemical space. Furthermore, prior research has rarely examined these new models in industry research settings in comparison to existing employed models. In this paper, we benchmark models extensively on 19 public and 16 proprietary industrial datasets spanning a wide variety of chemical endpoints. In addition, we introduce a graph convolutional model that consistently matches or outperforms models using fixed molecular descriptors as well as previous graph neural architectures on both public and proprietary datasets. Our empirical findings indicate that while approaches based on these representations have yet to reach the level of experimental reproducibility, our proposed model nevertheless offers significant improvements over models currently used in industrial workflows.

Keywords

Cite

@article{arxiv.1904.01561,
  title  = {Analyzing Learned Molecular Representations for Property Prediction},
  author = {Kevin Yang and Kyle Swanson and Wengong Jin and Connor Coley and Philipp Eiden and Hua Gao and Angel Guzman-Perez and Timothy Hopper and Brian Kelley and Miriam Mathea and Andrew Palmer and Volker Settels and Tommi Jaakkola and Klavs Jensen and Regina Barzilay},
  journal= {arXiv preprint arXiv:1904.01561},
  year   = {2019}
}
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