- Dec. 2, 2019, 2:00 pm US/Central
- Curia II
- Alex Alarcon, Argonne National Laboratory
Photometric galaxy surveys constitute a powerful cosmological probe but rely on the accurate
characterization of their redshift distributions using only broadband imaging, and can be very sensitive
to incomplete or biased priors used for redshift calibration. Several techniques for estimating the redshift
distributions of imaging surveys have been developed in the last decades, which can be broadly
separated in three categories: 1) direct calibration through spectroscopic redshifts, 2) mapping the
relation between photometry and redshift with a mix of theoretical models of galaxy spectra and
empirical knowledge from direct spectroscopy, and 3) comparing the sky positions of galaxies to the
positions of a tracer population with secure redshifts. In this work we extend a hierarchical Bayesian
model which combines these three main sources of information so it can be applied to real data. We test
the method in N-body simulations and find the incorporation of clustering information on top of
photometry to tighten the redshift posteriors and overcome biases in the prior that mimic those
happening in spectroscopic samples. This robustness to flaws in the redshift prior or training samples
would constitute a milestone for the control of redshift systematic uncertainties in future weak lensing
analyses.