Mapping the Space of Chemical Reactions Using Attention-Based Neural
Networks
- URL: http://arxiv.org/abs/2012.06051v1
- Date: Wed, 9 Dec 2020 10:25:30 GMT
- Title: Mapping the Space of Chemical Reactions Using Attention-Based Neural
Networks
- Authors: Philippe Schwaller, Daniel Probst, Alain C. Vaucher, Vishnu H. Nair,
David Kreutter, Teodoro Laino, Jean-Louis Reymond
- Abstract summary: This work shows that transformer-based models can infer reaction classes from non-annotated, simple text-based representations of chemical reactions.
Our best model reaches a classification accuracy of 98.2%.
The insights into chemical reaction space enabled by our learned fingerprints are illustrated by an interactive reaction atlas.
- Score: 0.3848364262836075
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Organic reactions are usually assigned to classes containing reactions with
similar reagents and mechanisms. Reaction classes facilitate the communication
of complex concepts and efficient navigation through chemical reaction space.
However, the classification process is a tedious task. It requires the
identification of the corresponding reaction class template via annotation of
the number of molecules in the reactions, the reaction center, and the
distinction between reactants and reagents. This work shows that
transformer-based models can infer reaction classes from non-annotated, simple
text-based representations of chemical reactions. Our best model reaches a
classification accuracy of 98.2%. We also show that the learned representations
can be used as reaction fingerprints that capture fine-grained differences
between reaction classes better than traditional reaction fingerprints. The
insights into chemical reaction space enabled by our learned fingerprints are
illustrated by an interactive reaction atlas providing visual clustering and
similarity searching.
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