Simulation-based inference of galaxy properties from JWST pixels
Patricia Iglesias-Navarro, Marc Huertas-Company, Pablo P\'erez-Gonz\'alez, Johan H. Knapen, ChangHoon Hahn, Anton M. Koekemoer, Steven L. Finkelstein, Natalia Villanueva, Andr\'es Asensio Ramos

TL;DR
This paper introduces a fast, simulation-based Bayesian framework for pixel-level analysis of galaxy properties using JWST data, enabling detailed spatially resolved stellar population maps across thousands of galaxies.
Contribution
It presents a novel, scalable inference method trained on synthetic data that accurately derives galaxy properties from JWST multiwavelength pixel photometry.
Findings
Achieved high accuracy in stellar mass estimation with R^2 of 0.99.
Produced detailed spatial maps of galaxy properties for over a thousand galaxies.
Identified limited impact of outshining in high-mass galaxies, but significant in low-mass ones.
Abstract
We present an efficient Bayesian SED-fitting framework tailored to multiwavelength pixel photometry from the JWST Advanced Deep Extragalactic Survey (JADES). Our method employs simulation-based inference to enable rapid posterior sampling across galaxy pixels, leveraging the unprecedented spatial resolution, wavelength coverage, and depth provided by the survey. It is trained on synthetic photometry generated from MILES stellar population models, incorporating both parametric and non-parametric SFHs, realistic noise, and JADES-like filter sensitivity thresholds. We validate this amortised inference approach on mock datasets, achieving robust and well-calibrated posterior distributions, with an score of 0.99 for stellar mass. Applying our pipeline to real observations, we derive spatially resolved maps of stellar population properties down to (averaged…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · Gaussian Processes and Bayesian Inference
