2026-03-23T12:07:53Z
2026-03-23T12:07:53Z
2024-01-17
2026-03-23T12:07:54Z
The quest for accurate and efficient Machine Learning (ML) models to predict complex molecular properties has driven the development of new quantum-inspired representations (QIR). This study introduces MODA (Molecular Orbital Decomposition and Aggregation), a novel QIR-class descriptor with enhanced predictive capabilities. By incorporating wave-function information, MODA is able to capture electronic structure intricacies, providing deeper chemical insight and improving performance in unsupervised and supervised learning tasks. Specially designed to be separable, the multi-moiety regularization technique unlocks the predictive power of MODA for both intra- and intermolecular properties, making it the first QIR-class descriptor capable of such distinction. We demonstrate that MODA shows the best performance for intermolecular magnetic exchange coupling (JAB) predictions among the descriptors tested herein. By offering a versatile solution to address both intra- and intermolecular properties, MODA showcases the potential of quantum-inspired descriptors to improve the predictive capabilities of ML- based methods in computational chemistry and materials discovery.
Article
Versió publicada
Anglès
QSPR (Relacions estructura-propietat quantitatives); Aprenentatge automàtic; Aprenentatge profund; QSPR (Quantitative Structure-Property Relationships); Machine learning; Deep learning (Machine learning)
Royal Society of Chemistry (RSC)
Reproducció del document publicat a: https://doi.org/10.1039/d3dd00187c
Digital Discovery, 2024, vol. 3, num.1, p. 99-112
https://doi.org/10.1039/d3dd00187c
cc-by-nc (c) Santiago, Raul, 2024
https://creativecommons.org/licenses/by-nc/4.0/