Author:
Farrell Delaney,Baldi Pierre,Ott Jordan,Ghosh Aishik,Steiner Andrew W.,Kavitkar Atharva,Lindblom Lee,Whiteson Daniel,Weber Fridolin
Abstract
Abstract
The interiors of neutron stars reach densities and temperatures beyond the limits of
terrestrial experiments, providing vital laboratories for probing nuclear physics. While the
star's interior is not directly observable, its pressure and density determine the star's
macroscopic structure which affects the spectra observed in telescopes. The relationship between
the observations and the internal state is complex and partially intractable, presenting
difficulties for inference. Previous work has focused on the regression from stellar spectra of
parameters describing the internal state. We demonstrate a calculation of the full likelihood of
the internal state parameters given observations, accomplished by replacing intractable elements
with machine learning models trained on samples of simulated stars. Our machine-learning-derived
likelihood allows us to perform maximum a posteriori estimation of the parameters of
interest, as well as full scans. We demonstrate the technique by inferring stellar mass and radius
from an individual stellar spectrum, as well as equation of state parameters from a set of
spectra. Our results are more precise than pure regression models, reducing the width of the
parameter residuals by 11.8% in the most realistic scenario. The neural networks will be released
as a tool for fast simulation of neutron star properties and observed spectra.
Subject
Astronomy and Astrophysics
Cited by
2 articles.
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