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Attention-based generative models for <i>de novo</i> molecular design

Orion Dollar, Nisarg Joshi, David A. C. Beck, Jim Pfaendtner

2021Chemical Science101 citationsDOIOpen Access PDF

Abstract

-VAE models and show that those with attention are able to learn a complex "molecular grammar" while improving performance on downstream tasks such as accurately sampling from the latent space ("model memory") or exploring novel chemistries not present in the training data. There is a notable relationship between a model's architecture, the structure of its latent memory and its performance during inference. We demonstrate that there is an unavoidable tradeoff between model exploration and validity that is a function of the complexity of the latent memory. However, novel sampling schemes may be used that optimize this tradeoff. We anticipate that attention will play an important role in future molecular design algorithms that can make efficient use of the detailed molecular substructures learned by the transformer.

Topics & Concepts

Generative grammarGenerative DesignComputer scienceArtificial intelligenceEngineeringChemical engineeringCompatibility (geochemistry)Computational Drug Discovery MethodsChemistry and Chemical EngineeringProcess Optimization and Integration
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