Photometric classification of quasars from DES and photo-$z$ estimation with Machine Learning
Pablo Motta, Filipe B. Abdalla, Elcio Abdalla, Gabriel S. Costa, Camila Cardoso

TL;DR
This study develops a machine learning-based method for classifying quasars and estimating their redshifts using DES and SDSS data, resulting in a large, reliable quasar catalog for cosmology.
Contribution
It introduces a hybrid machine learning approach for quasar classification and photometric redshift estimation, achieving high accuracy and extensive coverage.
Findings
High-precision quasar/galaxy classification with KNN (recall 0.77, precision 0.99)
Photometric redshifts estimated for over 870,000 objects up to z > 3
A catalog suitable for cosmological studies up to z ≈ 4
Abstract
This paper presents a comprehensive study of quasar photometric classification and redshift estimation using machine learning techniques. We cross-matched photometric data from the Dark Energy Survey Data Release 2 (DES DR2) with spectroscopic classifications from the Sloan Digital Sky Survey Data Release 16 (SDSS DR16), yielding an initial sample of 168,738 point-like objects. Using a K-Nearest Neighbors (KNN) algorithm with PSF magnitudes in the , , , and bands, we achieved high-precision quasar/galaxy classification against stellar contaminants, reaching a recall of 0.77 at 0.99 precision. Photometric redshifts were subsequently estimated using a hybrid machine learning approach combining a Boosted Decision Tree from ANNz and a Decision Tree Regressor from scikit-learn. The resulting catalog spans redshifts from to , with a distinct population…
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