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MolGrow: A Graph Normalizing Flow for Hierarchical Molecular Generation
by
Kuznetsov, Maksim
, Polykovskiy, Daniil
in
Chemical properties
/ Cognitive tasks
/ Molecular structure
/ Optimization
/ Perturbation
2021
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MolGrow: A Graph Normalizing Flow for Hierarchical Molecular Generation
by
Kuznetsov, Maksim
, Polykovskiy, Daniil
in
Chemical properties
/ Cognitive tasks
/ Molecular structure
/ Optimization
/ Perturbation
2021
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MolGrow: A Graph Normalizing Flow for Hierarchical Molecular Generation
Paper
MolGrow: A Graph Normalizing Flow for Hierarchical Molecular Generation
2021
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Overview
We propose a hierarchical normalizing flow model for generating molecular graphs. The model produces new molecular structures from a single-node graph by recursively splitting every node into two. All operations are invertible and can be used as plug-and-play modules. The hierarchical nature of the latent codes allows for precise changes in the resulting graph: perturbations in the top layer cause global structural changes, while perturbations in the consequent layers change the resulting molecule marginally. The proposed model outperforms existing generative graph models on the distribution learning task. We also show successful experiments on global and constrained optimization of chemical properties using latent codes of the model.
Publisher
Cornell University Library, arXiv.org
Subject
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