SIMBAD references

2020MNRAS.498.5498H - Mon. Not. R. Astron. Soc., 498, 5498-5510 (2020/November-2)

Augmenting machine learning photometric redshifts with Gaussian mixture models.

HATFIELD P.W., ALMOSALLAM I.A., JARVIS M.J., ADAMS N., BOWLER R.A.A., GOMES Z., ROBERTS S.J. and SCHREIBER C.

Abstract (from CDS):

Wide-area imaging surveys are one of the key ways of advancing our understanding of cosmology, galaxy formation physics, and the large-scale structure of the Universe in the coming years. These surveys typically require calculating redshifts for huge numbers (hundreds of millions to billions) of galaxies - almost all of which must be derived from photometry rather than spectroscopy. In this paper, we investigate how using statistical models to understand the populations that make up the colour-magnitude distribution of galaxies can be combined with machine learning photometric redshift codes to improve redshift estimates. In particular, we combine the use of Gaussian mixture models with the high-performing machine-learning photo-z algorithm GPz and show that modelling and accounting for the different colour-magnitude distributions of training and test data separately can give improved redshift estimates, reduce the bias on estimates by up to a half, and speed up the run-time of the algorithm. These methods are illustrated using data from deep optical and near-infrared data in two separate deep fields, where training and test data of different colour-magnitude distributions are constructed from the galaxies with known spectroscopic redshifts, derived from several heterogeneous surveys.

Abstract Copyright: © 2020 The Author(s) Published by Oxford University Press on behalf of the Royal Astronomical Society

Journal keyword(s): techniques: photometric - surveys - galaxies: distances and redshifts

Simbad objects: 4

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