2022
DOI: 10.26434/chemrxiv-2022-bn5nt
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Bidirectional Graphormer for Reactivity Understanding: neural network trained to reaction atom-to-atom mapping task

Abstract: This work introduces GraphormerMapper – a new algorithm for reactions atom-to-atom mapping (AAM) based on a distance-aware BERT neural network. In benchmarking studies with IBM RxnMapper, the best AAM algorithm according to our previous study, we demonstrate that our AAM algorithm is superior on our “Golden” benchmarking dataset. The mapper is implemented in Chython [https://github.com/chython/chython] and Chytorch [https://github.com/chython/chytorch, https://github.com/chython/chytorch-rxnmap] Python package… Show more

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Cited by 1 publication
(3 citation statements)
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“…This result provides a rigorous justification for the computational approach in [28] to compare atom maps by testing for isomorphisms of their ITSs (or CGRs). Nevertheless we should add that the authors of [28] and [36] introduced and made use of a manually curated set of reactions for their benchmarking purposes, which they refer to as Golden data set and which consists of both stoichiometrically balanced and unbalanced reactions. In our contribution we also made use of this data set for our own computational analysis, but we only employed the former type of reactions, since it should be noted that the use of the latter type is in conflict with the formal requirement now established by Cor.…”
Section: Equivalence Of Atom Mapsmentioning
confidence: 99%
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“…This result provides a rigorous justification for the computational approach in [28] to compare atom maps by testing for isomorphisms of their ITSs (or CGRs). Nevertheless we should add that the authors of [28] and [36] introduced and made use of a manually curated set of reactions for their benchmarking purposes, which they refer to as Golden data set and which consists of both stoichiometrically balanced and unbalanced reactions. In our contribution we also made use of this data set for our own computational analysis, but we only employed the former type of reactions, since it should be noted that the use of the latter type is in conflict with the formal requirement now established by Cor.…”
Section: Equivalence Of Atom Mapsmentioning
confidence: 99%
“…GraphormerMapper [36] is also based on a Transformer Neural Network architecture. The EEquAAM suite also provides a wrapper for these tools to interact with the comparison methods mentioned above.…”
Section: Its-υmentioning
confidence: 99%
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