Issue 1, 2024

Unlocking the predictive power of quantum-inspired representations for intermolecular properties in machine learning

Abstract

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.

Graphical abstract: Unlocking the predictive power of quantum-inspired representations for intermolecular properties in machine learning

Supplementary files

Article information

Article type
Paper
Submitted
20 Sep 2023
Accepted
13 Nov 2023
First published
14 Nov 2023
This article is Open Access
Creative Commons BY-NC license

Digital Discovery, 2024,3, 99-112

Unlocking the predictive power of quantum-inspired representations for intermolecular properties in machine learning

R. Santiago, S. Vela, M. Deumal and J. Ribas-Arino, Digital Discovery, 2024, 3, 99 DOI: 10.1039/D3DD00187C

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