COSMOS-Web: Estimating Physical Parameters of Galaxies Using Self-Organizing Maps
Fatemeh Abedini, Ghassem Gozaliasl, Akram Hasani Zonoozi, Atousa Kalantari, Maarit Korpi-Lagg, Olivier Ilbert, Hollis Akins, Natalie Allen, Rafael Arango-Toro, Caitlin Casey, Nicole Drakos, Andreas Faisst, Carter Flayhart, Maximilien Franco, Hosein Haghi, Aryana Haghjoo

TL;DR
This paper introduces a novel application of Self-Organizing Maps to estimate galaxy physical parameters from JWST photometry, demonstrating high accuracy and robustness in both simulated and real datasets, advancing galaxy evolution studies.
Contribution
It presents a new method using Self-Organizing Maps for direct estimation of galaxy parameters from multiband JWST data, improving accuracy over previous techniques.
Findings
SOM accurately recovers galaxy parameters in simulations.
Method achieves high precision with $\sigma_{NMAD}$ between 0.1 and 0.3.
70% of predictions are within 1$\sigma$ of reference values.
Abstract
The COSMOS-Web survey, with its unparalleled combination of multiband data, notably, near-infrared imaging from JWST's NIRCam (F115W, F150W, F277W, and F444W), provides a transformative dataset down to mag (F444W) for studying galaxy evolution. In this work, we employ Self-Organizing Maps (SOMs), an unsupervised machine learning method, to estimate key physical parameters of galaxies -- redshift, stellar mass, star formation rate (SFR), specific SFR (sSFR), and age -- directly from photometric data out to . SOMs efficiently project high-dimensional galaxy color information onto 2D maps, showing how physical properties vary among galaxies with similar spectral energy distributions. We first validate our approach using mock galaxy catalogs from the HORIZON-AGN simulation, where the SOM accurately recovers the true parameters, demonstrating its robustness. Applying the…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · Gaussian Processes and Bayesian Inference
