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A new machine learning approach for predicting the spectra of meson bound states

    https://doi.org/10.1142/S0218301320500925Cited by:3 (Source: Crossref)

    In this paper, we investigate the benefits of machine learning (ML) approaches in predicting the spectra of meson bound states. A linear model (LM) approach is used to predict the spectra of some heavy mesons. Our proposed method has been successfully reproduced in recent experiments, to validate known outcomes. Our results are compared favorably to those obtained using other techniques. This novel perspective opens up a new future in the use of ML in the field of particle physics.

    PACS: 12.40.Yx, 14.40.Pq, 02.60.Cb, 12.39.Jh, 14.65.Dw, 14.40.Lb, 14.80.Bn
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