Euclid preparation: XXII. Selection of Quiescent Galaxies from Mock Photometry using Machine Learning
Euclid Collaboration: A.Humphrey, L.Bisigello, P.A.C.Cunha,, M.Bolzonella, S.Fotopoulou, K.Caputi, C.Tortora, G.Zamorani, P.Papaderos,, D.Vergani, J.Brinchmann, M.Moresco, A.Amara, N.Auricchio, M.Baldi, R.Bender,, D.Bonino, E.Branchini, M.Brescia, S.Camera, V.Capobianco

TL;DR
This paper introduces a machine learning pipeline that accurately selects quiescent galaxies from Euclid photometry and multiwavelength data, improving classification performance over traditional methods.
Contribution
The novel ARIADNE pipeline combines meta-learning, decision trees, nearest neighbors, and deep learning for enhanced galaxy classification and photometric redshift estimation.
Findings
Achieves normalized mean absolute deviation < 0.03
Reduces catastrophic outliers to < 0.02
Outperforms UVJ and color-color selection methods
Abstract
The Euclid Space Telescope will provide deep imaging at optical and near-infrared wavelengths, along with slitless near-infrared spectroscopy, across ~15,000 sq deg of the sky. Euclid is expected to detect ~12 billion astronomical sources, facilitating new insights into cosmology, galaxy evolution, and various other topics. To optimally exploit the expected very large data set, there is the need to develop appropriate methods and software. Here we present a novel machine-learning based methodology for selection of quiescent galaxies using broad-band Euclid I_E, Y_E, J_E, H_E photometry, in combination with multiwavelength photometry from other surveys. The ARIADNE pipeline uses meta-learning to fuse decision-tree ensembles, nearest-neighbours, and deep-learning methods into a single classifier that yields significantly higher accuracy than any of the individual learning methods…
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