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Towards Improved Quantum Machine Learning for Molecular Force Fields

Towards Improved Quantum Machine Learning for Molecular Force Fields

来源:Arxiv_logoArxiv
英文摘要

This study explores the use of equivariant quantum neural networks (QNN) for generating molecular force fields, focusing on the rMD17 dataset. We consider a QNN architecture based on previous research and point out shortcomings in the parametrization of the atomic environments, that limits its expressivity as an interatomic potential and precludes transferability between molecules. We propose a revised QNN architecture that addresses these shortcomings. While both QNNs show promise in force prediction, with the revised architecture showing improved accuracy, they struggle with energy prediction. Further, both QNNs architectures fail to demonstrate a meaningful scaling law of decreasing errors with increasing training data. These findings highlight the challenges of scaling QNNs for complex molecular systems and emphasize the need for improved encoding strategies, regularization techniques, and hybrid quantum-classical approaches.

Yannick Couzinié、Shunsuke Daimon、Hirofumi Nishi、Natsuki Ito、Yusuke Harazono、Yu-ichiro Matsushita

物理学化学

Yannick Couzinié,Shunsuke Daimon,Hirofumi Nishi,Natsuki Ito,Yusuke Harazono,Yu-ichiro Matsushita.Towards Improved Quantum Machine Learning for Molecular Force Fields[EB/OL].(2025-05-06)[2025-06-25].https://arxiv.org/abs/2505.03213.点此复制

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