Weinbauer, K., Phan, T.-L., Stadler, P. F., Gärtner, T., & Malhotra, S. (2025). Prime Implicant Explanations for Reaction Feasibility Prediction. https://doi.org/10.48550/ARXIV.2510.09226
E194-06 - Forschungsbereich Machine Learning E056-10 - Fachbereich SecInt-Secure and Intelligent Human-Centric Digital Technologies E056-23 - Fachbereich Innovative Combinations and Applications of AI and ML (iCAIML) E056-26 - Fachbereich Automated Reasoning
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Date (published):
10-Oct-2025
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Keywords:
Prime Implicant Explanation; Subgraph Explanation; Reaction Prediction; Synthesis Planning
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Abstract:
Machine learning models that predict the feasibility of chemical reactions have become central to automated synthesis planning. Despite their predictive success, these models often lack transparency and interpretability. We introduce a novel formulation of prime implicant explanations--also known as minimally sufficient reasons--tailored to this domain, and propose an algorithm for computing such explanations in small-scale reaction prediction tasks. Preliminary experiments demonstrate that our notion of prime implicant explanations conservatively captures the ground truth explanations. That is, such explanations often contain redundant bonds and atoms but consistently capture the molecular attributes that are essential for predicting reaction feasibility.
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Project title:
Training Alliance for Computational Systems chemistry: Proposal number: 101072930 (European Commission) Structured Data Learning with Generalized Similarities: ICT22-059 (WWTF Wiener Wissenschafts-, Forschu und Technologiefonds)
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Research Areas:
Logic and Computation: 20% Mathematical and Algorithmic Foundations: 20% Information Systems Engineering: 60%