Physically Interpretable Machine Learning for nuclear masses
Abstract
We present a novel approach to modeling the ground state mass of atomic nuclei based directly on a probabilistic neural network constrained by relevant physics. Our Physically Interpretable Machine Learning (PIML) approach incorporates knowledge of physics by using a physically motivated feature space in addition to a soft physics constraint that is implemented as a penalty to the loss function. We train our PIML model on a random set of 20\% of the Atomic Mass Evaluation (AME) and predict the remaining 80\%. The success of our methodology is exhibited by the unprecedented σRMS186 keV match to data for the training set and σRMS316 keV for the entire AME with Z ≥ 20. We show that our general methodology can be interpreted using feature importance.
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