posted on 2024-08-06, 10:36authored byAndrew Johnson, Chris BlakeChris Blake, Alexandra Amon, Thomas Erben, Karl GlazebrookKarl Glazebrook, Joachim Harnois-Deraps, Catherine Heymans, Hendrik Hildebrandt, Shahab Joudaki, Dominik Klaes, Konrad Kuijken, Chris Lidman, Felipe Marin Perucci, John McFarland, Christopher B. Morrison, David Parkinson, Gregory B. Poole, Mario Radovich, Christian Wolf
We develop a statistical estimator to infer the redshift probability distribution of a photometric sample of galaxies from its angular cross-correlation in redshift bins with an overlapping spectroscopic sample. This estimator is a minimum-variance weighted quadratic function of the data: a quadratic estimator. This extends and modifies the methodology presented by McQuinn & White. The derived source redshift distribution is degenerate with the source galaxy bias, which must be constrained via additional assumptions. We apply this estimator to constrain source galaxy redshift distributions in theKilo-Degree imaging survey through crosscorrelation with the spectroscopic 2-degree Field Lensing Survey, presenting results first as a binned step-wise distribution in the range z < 0.8, and then building a continuous distribution using a Gaussian process model. We demonstrate the robustness of our methodology using mock catalogues constructed from N-body simulations, and comparisons with other techniques for inferring the redshift distribution.
Funding
In Search of New Gravity: testing advanced theories of gravity with cosmological data