Physics Letters B (Apr 2022)

Hilbert series, machine learning, and applications to physics

  • Jiakang Bao,
  • Yang-Hui He,
  • Edward Hirst,
  • Johannes Hofscheier,
  • Alexander Kasprzyk,
  • Suvajit Majumder

Journal volume & issue
Vol. 827
p. 136966

Abstract

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We describe how simple machine learning methods successfully predict geometric properties from Hilbert series (HS). Regressors predict embedding weights in projective space to ∼1 mean absolute error, whilst classifiers predict dimension and Gorenstein index to >90% accuracy with ∼0.5% standard error. Binary random forest classifiers managed to distinguish whether the underlying HS describes a complete intersection with high accuracies exceeding 95%. Neural networks (NNs) exhibited success identifying HS from a Gorenstein ring to the same order of accuracy, whilst generation of “fake” HS proved trivial for NNs to distinguish from those associated to the three-dimensional Fano varieties considered.