Machine learning light hypernuclei
Abstract
We employ a feed-forward artificial neural network to extrapolate at large model spaces the results of ab-initio hypernuclear No-Core Shell Model calculations for the separation energy B of the lightest hypernuclei, 3, 4 and 4, obtained in computationally accessible harmonic oscillator basis spaces using chiral nucleon-nucleon, nucleon-nucleon-nucleon and hyperon-nucleon interactions. The overfitting problem is avoided by enlarging the size of the input dataset and by introducing a Gaussian noise during the training process of the neural network. We find that a network with a single hidden layer of eight neurons is sufficient to extrapolate correctly the value of the separation energy to model spaces of size Nmax=100. The results obtained are in agreement with the experimental data in the case of 3 and the 0+ state of 4, although they are off of the experiment by about 0.3 MeV for both the 0+ and 1+states of 4 and the 1+ state of 4. We find that our results are in excellent agreement with those obtained using other extrapolation schemes of the No-Core Shell Model calculations, showing this that an ANN is a reliable method to extrapolate the results of hypernuclear No-Core Shell Model calculations to large model spaces.
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