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Main Authors: Fenogli, Juliette, Grimaud, Laurence, Vuilleumier, Rodolphe
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.01576
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author Fenogli, Juliette
Grimaud, Laurence
Vuilleumier, Rodolphe
author_facet Fenogli, Juliette
Grimaud, Laurence
Vuilleumier, Rodolphe
contents The integration of machine learning (ML) into chemistry offers transformative potential in the design of molecules with targeted properties. However, the focus has often been on creating highly efficient predictive models, sometimes at the expense of interpretability. In this study, we leverage explainable AI techniques to explore the rational design of boron-based Lewis acids, which play a pivotal role in organic reactions due to their electron-ccepting properties. Using Fluoride Ion Affinity as a proxy for Lewis acidity, we developed interpretable ML models based on chemically meaningful descriptors, including ab initio computed features and substituent-based parameters derived from the Hammett linear free-energy relationship. By constraining the chemical space to well-defined molecular scaffolds, we achieved highly accurate predictions (mean absolute error < 6 kJ/mol), surpassing conventional black-box deep learning models in low-data regimes. Interpretability analyses of the models shed light on the origin of Lewis acidity in these compounds and identified actionable levers to modulate it through the nature and positioning of substituents on the molecular scaffold. This work bridges ML and chemist's way of thinking, demonstrating how explainable models can inspire molecular design and enhance scientific understanding of chemical reactivity.
format Preprint
id arxiv_https___arxiv_org_abs_2501_01576
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Constructing and explaining machine learning models for chemistry: example of the exploration and design of boron-based Lewis acids
Fenogli, Juliette
Grimaud, Laurence
Vuilleumier, Rodolphe
Chemical Physics
Artificial Intelligence
The integration of machine learning (ML) into chemistry offers transformative potential in the design of molecules with targeted properties. However, the focus has often been on creating highly efficient predictive models, sometimes at the expense of interpretability. In this study, we leverage explainable AI techniques to explore the rational design of boron-based Lewis acids, which play a pivotal role in organic reactions due to their electron-ccepting properties. Using Fluoride Ion Affinity as a proxy for Lewis acidity, we developed interpretable ML models based on chemically meaningful descriptors, including ab initio computed features and substituent-based parameters derived from the Hammett linear free-energy relationship. By constraining the chemical space to well-defined molecular scaffolds, we achieved highly accurate predictions (mean absolute error < 6 kJ/mol), surpassing conventional black-box deep learning models in low-data regimes. Interpretability analyses of the models shed light on the origin of Lewis acidity in these compounds and identified actionable levers to modulate it through the nature and positioning of substituents on the molecular scaffold. This work bridges ML and chemist's way of thinking, demonstrating how explainable models can inspire molecular design and enhance scientific understanding of chemical reactivity.
title Constructing and explaining machine learning models for chemistry: example of the exploration and design of boron-based Lewis acids
topic Chemical Physics
Artificial Intelligence
url https://arxiv.org/abs/2501.01576