The Astronomical Journal (Jan 2024)

Probabilistic Forward Modeling of Galaxy Catalogs with Normalizing Flows

  • John Franklin Crenshaw,
  • J. Bryce Kalmbach,
  • Alexander Gagliano,
  • Ziang Yan,
  • Andrew J. Connolly,
  • Alex I. Malz,
  • Samuel J. Schmidt,
  • The LSST Dark Energy Science Collaboration

DOI
https://doi.org/10.3847/1538-3881/ad54bf
Journal volume & issue
Vol. 168, no. 2
p. 80

Abstract

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Evaluating the accuracy and calibration of the redshift posteriors produced by photometric redshift (photo- z ) estimators is vital for enabling precision cosmology and extragalactic astrophysics with modern wide-field photometric surveys. Evaluating photo- z posteriors on a per-galaxy basis is difficult, however, as real galaxies have a true redshift but not a true redshift posterior. We introduce PZFlow, a Python package for the probabilistic forward modeling of galaxy catalogs with normalizing flows. For catalogs simulated with PZFlow, there is a natural notion of “true” redshift posteriors that can be used for photo- z validation. We use PZFlow to simulate a photometric galaxy catalog where each galaxy has a redshift, noisy photometry, shape information, and a true redshift posterior. We also demonstrate the use of an ensemble of normalizing flows for photo- z estimation. We discuss how PZFlow will be used to validate the photo- z estimation pipeline of the Dark Energy Science Collaboration, and the wider applicability of PZFlow for statistical modeling of any tabular data.

Keywords