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arxiv: 2310.11423 · v1 · pith:5NH3SVO4 · submitted 2023-10-17 · physics.chem-ph · cond-mat.mtrl-sci

Predicting polymerization reactions via transfer learning using chemical language models

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classification physics.chem-ph cond-mat.mtrl-sci
keywords polymerizationmodelreactionsaccuracyforwardlanguagematerialsmodels
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Polymers are candidate materials for a wide range of sustainability applications such as carbon capture and energy storage. However, computational polymer discovery lacks automated analysis of reaction pathways and stability assessment through retro-synthesis. Here, we report the first extension of transformer-based language models to polymerization reactions for both forward and retrosynthesis tasks. To that end, we have curated a polymerization dataset for vinyl polymers covering reactions and retrosynthesis for representative homo-polymers and co-polymers. Overall, we obtain a forward model Top-4 accuracy of 80% and a backward model Top-4 accuracy of 60%. We further analyze the model performance with representative polymerization and retro-synthesis examples and evaluate its prediction quality from a materials science perspective.

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