Product units in gated recurrent units improve nuclear-mass prediction

arXiv:2606.0686611.0
Originality Incremental advance
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For nuclear physicists, this method improves prediction accuracy of nuclear masses, aiding exploration of unknown regions of the nuclear chart.

The paper introduces a complex-valued additive-multiplicative product-unit gated recurrent unit (AM-PU-GRU) for nuclear-mass prediction, achieving interpolation RMSE of 0.227 ± 0.004 MeV and extrapolation RMSE of 0.179 ± 0.015 MeV, outperforming state-of-the-art models and baselines.

The prediction of masses of atomic nuclei using machine learning can complement theoretical models and advance the exploration of poorly known domains of the nuclear chart. We propose a machine learning technique based on gated recurrent units (GRU), which have demonstrated competitive performance in nuclear-mass prediction by exploiting long-term dependencies. By integrating multiplicative interactions and product-unit transformations within recurrent units, we report significant improvements in nuclear-mass prediction. Computations are performed in the complex domain to jointly capture amplitude and phase dynamics. For interpolation and temporal-extrapolation tasks based on the atomic mass evaluation (AME2016 and AME2020), the complex additive-multiplicative product-unit gated recurrent unit (AM-PU-GRU) model consistently achieves the lowest prediction errors, with an interpolation RMSE of 0.227 $\pm$ 0.004 MeV and an extrapolation RMSE of 0.179 $\pm$ 0.015 MeV. These results surpass other state-of-the-art machine learning models and also outperform the real-valued GRU baseline and product-unit ablation variants, while remaining robust to different theoretical priors, including WS4 and SEMF. Our findings establish complex-valued product-unit recurrent networks as a new benchmark for sequence-based nuclear-mass prediction.

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