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When does global attention help: a unified empirical study on atomistic graph learning

Arindam Chowdhury et al · BMC · 2026

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Abstract Graph neural networks (GNNs) are widely used as surrogates for costly experiments and first-principles simulations to study the behavior of compounds at atomistic scale, and their architectural complexity is constantly increasing to enable the modeling of complex physics. While most recent GNNs combine more traditional message passing neural networks (MPNNs) layers to model short-range interactions with more advanced graph transformers (GTs) with global attention mechanisms to model long-range interactions, it is still unclear when global attention mechanisms provide real benefits over well-tuned MPNN layers due to inconsistent implementations, features, or hyperparameter tuning. We introduce the first unified, reproducible benchmarking framework–built on HydraGNN–that enables seamless switching among four controlled model classes: MPNN, MPNN with chemistry/topology encoders, GPS-style hybrids of MPNN with global attention, and fully fused localglobal models with encoders. Using seven diverse open-source datasets for benchmarking across regression and classification tasks, we systematically isolate the contributions of message passing, global attention, and encoder-based feature augmentation. Our study shows that encoder-augmented MPNNs form a robust baseline, while fused localglobal models yield the clearest benefits for properties governed by long-range interaction effects. We further quantify the accuracycompute trade-offs of attention, reporting its overhead in memory. Together, these results establish the first controlled evaluation of global attention in atomistic graph learning and provide a reproducible testbed for future model development.

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APA 7

al, A. C. E. (2026). When does global attention help: a unified empirical study on atomistic graph learning. https://doi.org/10.1186/s13321-026-01171-z

MLA

al, Arindam Chowdhury et. "When does global attention help: a unified empirical study on atomistic graph learning." 2026. https://doi.org/10.1186/s13321-026-01171-z.

Chicago

al, Arindam Chowdhury et. 2026. "When does global attention help: a unified empirical study on atomistic graph learning.". https://doi.org/10.1186/s13321-026-01171-z.

Harvard

al, A. C. E. 2026, When does global attention help: a unified empirical study on atomistic graph learning, BMC, available at: https://doi.org/10.1186/s13321-026-01171-z [Accessed 29 Jun. 2026].

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Título
When does global attention help: a unified empirical study on atomistic graph learning
Autor / colaboradores
Arindam Chowdhury et al
Editorial
BMC
Año de publicación
2026
ISSN
1758-2946
ISSN
1758-2946
Idioma
eng

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