TL;DR
This paper demonstrates that photometric redshift errors, including outliers, can be self-calibrated directly from weak lensing survey data, enhancing the robustness and precision of cosmological parameter estimation.
Contribution
It introduces a method for self-calibrating Gaussian and outlier photo-z parameters from survey data alone, without external calibration, and explores the benefits of internal cross-correlations and CMB lensing.
Findings
Self-calibration of photo-z errors is feasible without external data.
Null correlations significantly improve photo-z parameter constraints.
Including CMB lensing enhances cosmological and photo-z constraints.
Abstract
Calibrating photometric redshift errors in weak lensing surveys with external data is extremely challenging. We show that both Gaussian and outlier photo-z parameters can be self-calibrated from the data alone. This comes at no cost for the neutrino masses, curvature and dark energy equation of state , but with a 65% degradation when both and are varied. We perform a realistic forecast for the Vera Rubin Observatory (VRO) Legacy Survey of Space and Time (LSST) 3x2 analysis, combining cosmic shear, projected galaxy clustering and galaxy - galaxy lensing. We confirm the importance of marginalizing over photo-z outliers. We examine a subset of internal cross-correlations, dubbed "null correlations", which are usually ignored in 3x2 analyses. Despite contributing only 10% of the total signal-to-noise, these null correlations improve the constraints on photo-z…
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