Euclid preparation. LI. Forecasting the recovery of galaxy physical properties and their relations with template-fitting and machine-learning methods
Euclid Collaboration: A. Enia (1, 2), M. Bolzonella (2), L., Pozzetti (2), A. Humphrey (3, 4), P. A. C. Cunha (5, 3), W. G. Hartley, (6), F. Dubath (6), S. Paltani (6), X. Lopez Lopez (1, 2), S. Quai (1 and, 2), S. Bardelli (2), L. Bisigello (7, 8), S. Cavuoti (9, 10), G. De

TL;DR
This paper forecasts Euclid's ability to recover galaxy properties using mock catalogs, comparing template-fitting and machine learning methods, and finds that mixed-label training improves performance, especially in deep fields.
Contribution
It introduces a forecasting framework for Euclid galaxy property recovery, demonstrating that mixed-label training enhances machine learning performance over traditional methods.
Findings
Mixed-label training improves galaxy property recovery.
Performance degradation is minimal when u band data is missing.
Deep field data yields the best recovery results.
Abstract
Euclid will collect an enormous amount of data during the mission's lifetime, observing billions of galaxies in the extragalactic sky. Along with traditional template-fitting methods, numerous machine learning algorithms have been presented for computing their photometric redshifts and physical parameters (PPs), requiring significantly less computing effort while producing equivalent performance measures. However, their performance is limited by the quality and amount of input information, to the point where the recovery of some well-established physical relationships between parameters might not be guaranteed. To forecast the reliability of Euclid photo-s and PPs calculations, we produced two mock catalogs simulating Euclid photometry. We simulated the Euclid Wide Survey (EWS) and Euclid Deep Fields (EDF). We tested the performance of a template-fitting algorithm (Phosphoros) and…
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