This work introduces MARCC (Mapping-Assisted Reaction Center and Classification), a multitask graph neural network for modeling chemical reactions in a structured manner.MARCC jointly learns atom mapping (graph matching), reaction center prediction (binary classification), and reaction classification (global classification) within a unified architecture.By coupling these interdependent tasks, the model captures the structural relationships between local reactivity and global transformation semantics.Experiments on the USPTO-50K benchmark demonstrate that multitask supervision improves both accuracy and interpretability compared to single-task and product-only baselines.The framework provides a general approach for graph-based reaction understanding and structured chemical prediction.

Structured Chemical Reaction Modeling with Multitask Graph Neural Networks / M. Astero, A.L.. - (2025 Oct 14). (10.5281/zenodo.17352840 ) [10.1101/2025.10.13.682169v1].

Structured Chemical Reaction Modeling with Multitask Graph Neural Networks

E. Casiraghi;
2025

Abstract

This work introduces MARCC (Mapping-Assisted Reaction Center and Classification), a multitask graph neural network for modeling chemical reactions in a structured manner.MARCC jointly learns atom mapping (graph matching), reaction center prediction (binary classification), and reaction classification (global classification) within a unified architecture.By coupling these interdependent tasks, the model captures the structural relationships between local reactivity and global transformation semantics.Experiments on the USPTO-50K benchmark demonstrate that multitask supervision improves both accuracy and interpretability compared to single-task and product-only baselines.The framework provides a general approach for graph-based reaction understanding and structured chemical prediction.
Settore INFO-01/A - Informatica
14-ott-2025
https://www.biorxiv.org/content/10.1101/2025.10.13.682169v1
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1255281
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