TL;DR
This paper introduces GPz, a Bayesian Gaussian process model that accurately estimates photometric redshifts and their heteroscedastic uncertainties, outperforming existing methods on SDSS data.
Contribution
The paper presents a novel non-stationary sparse Gaussian process approach that jointly models photometric redshifts and their heteroscedastic uncertainties, addressing outliers and input-dependent noise.
Findings
GPz outperforms TPZ and ANNz2 in SDSS DR12 data
The model effectively captures heteroscedastic noise
Provides reliable variance estimates for cosmology experiments
Abstract
The next generation of cosmology experiments will be required to use photometric redshifts rather than spectroscopic redshifts. Obtaining accurate and well-characterized photometric redshift distributions is therefore critical for Euclid, the Large Synoptic Survey Telescope and the Square Kilometre Array. However, determining accurate variance predictions alongside single point estimates is crucial, as they can be used to optimize the sample of galaxies for the specific experiment (e.g. weak lensing, baryon acoustic oscillations, supernovae), trading off between completeness and reliability in the galaxy sample. The various sources of uncertainty in measurements of the photometry and redshifts put a lower bound on the accuracy that any model can hope to achieve. The intrinsic uncertainty associated with estimates is often non-uniform and input-dependent, commonly known in statistics as…
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