Iras-allsky

Machine Learning Classification of COSMOS2020 Galaxies: Quiescent versus Star-forming

November 2025 • 2025ApJ...993..123A

Authors • Asadi, Vahid • Chartab, Nima • Zonoozi, Akram Hasani • Haghi, Hosein • Gozaliasl, Ghassem • Haghjoo, Aryana • Mobasher, Bahram

Abstract • Accurately distinguishing between quiescent and star-forming galaxies is essential for understanding galaxy evolution. Traditional methods, such as spectral energy distribution (SED) fitting, can be computationally expensive and may struggle to capture complex galaxy properties. This study aims to develop a robust and efficient machine learning (ML) classification method to identify quiescent and star-forming galaxies within the Farmer COSMOS2020 catalog. We utilized JWST wide-field light cones from the Santa Cruz semianalytical modeling framework to train a supervised ML model, the CatBoostClassifier, using 28 color features derived from eight mutual photometric bands within the COSMOS catalog. The model was validated against a testing set and compared to the SED-fitting method in terms of precision, recall, F1 score, and execution time. Preprocessing steps included addressing missing data, injecting observational noise, and applying a magnitude cut (mch1 < 26 AB) along with a redshift range of 0.2 < z < 3.5 to align the simulated and observational data sets. The ML method achieved an F1 score of 89% for quiescent galaxies, significantly outperforming the SED-fitting method, which achieved 54%. The ML model demonstrated superior recall (88% versus 38%) while maintaining comparable precision. When applied to the COSMOS2020 catalog, the ML model predicted a systematically higher fraction of quiescent galaxies across all redshift bins within 0.2 < z < 3.5 compared to traditional methods like NUVrJ and SED-fitting. This study shows that ML, combined with multiwavelength data, can effectively identify quiescent and star-forming galaxies, providing valuable insights into galaxy evolution. The trained classifier and full classification catalog are publicly available.

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Nima Chartab

Staff Scientist