Deducing neutron star equation of state parameters directly from telescope spectra with uncertainty-aware machine learning

@article{Farrell2022DeducingNS,
  title={Deducing neutron star equation of state parameters directly from telescope spectra with uncertainty-aware machine learning},
  author={Delaney Farrell and Pierre Baldi and Jordan Ott and Aishik Ghosh and Andrew W. Steiner and Atharva Kavitkar and Lee Lindblom and Daniel Whiteson and Fridolin Weber},
  journal={Journal of Cosmology and Astroparticle Physics},
  year={2022},
  volume={2023}
}
Neutron stars provide a unique laboratory for studying matter at extreme pressures and densities. While there is no direct way to explore their interior structure, X-rays emitted from these stars can indirectly provide clues to the equation of state (EOS) of the superdense nuclear matter through the inference of the star's mass and radius. However, inference of EOS directly from a star's X-ray spectra is extremely challenging and is complicated by systematic uncertainties. The current state of… 

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