Abstract
Photometric redshifts (photo-z) are fundamental in galaxy surveys to
address different topics, from gravitational lensing and dark matter
distribution to galaxy evolution. The Kilo Degree Survey (KiDS), I.e.
the European Southern Observatory (ESO) public survey on the VLT Survey
Telescope (VST), provides the unprecedented opportunity to exploit a
large galaxy data set with an exceptional image quality and depth in the
optical wavebands. Using a KiDS subset of about 25000 galaxies with
measured spectroscopic redshifts, we have derived photo-z using (I)
three different empirical methods based on supervised machine learning;
(II) the Bayesian photometric redshift model (or BPZ); and (III) a
classical spectral energy distribution (SED) template fitting procedure
(LE PHARE). We confirm that, in the regions of the photometric parameter
space properly sampled by the spectroscopic templates, machine learning
methods provide better redshift estimates, with a lower scatter and a
smaller fraction of outliers. SED fitting techniques, however, provide
useful information on the galaxy spectral type, which can be effectively
used to constrain systematic errors and to better characterize potential
catastrophic outliers. Such classification is then used to specialize
the training of regression machine learning models, by demonstrating
that a hybrid approach, involving SED fitting and machine learning in a
single collaborative framework, can be effectively used to improve the
accuracy of photo-z estimates.
Original language | English |
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Pages (from-to) | 2039-2053 |
Number of pages | 15 |
Journal | Monthly Notices of the Royal Astronomical Society |
Volume | 466 |
Issue number | 2 |
DOIs | |
Publication status | Published - 1-Apr-2017 |
Keywords
- methods: data analysis
- catalogues
- SDSS
- CLASSIFICATION
- OSCILLATION SPECTROSCOPIC SURVEY
- SPECTRAL ENERGY-DISTRIBUTIONS
- STAR-FORMING GALAXIES
- DIGITAL SKY SURVEY
- KILO-DEGREE SURVEY
- DATA RELEASE 2
- DEEP SURVEY
- BLIND TEST