JWST Advanced Deep Extragalactic Survey (JADES) Data Release 5: stellar population catalogue for galaxies in GOODS-N and GOODS-S
Qiao Duan, Sandro Tacchella, Benjamin D. Johnson, Brant Robertson, Charlotte Simmonds, William M. Baker, Andrew J. Bunker, Stefano Carniani, Courtney Carreira, St\'ephane Charlot, Jacopo Chevallard, Emma Curtis-Lake, A. Lola Danhaive, Francesco D'Eugenio, Daniel J. Eisenstein

TL;DR
This paper presents a comprehensive galaxy stellar population catalogue from JWST's JADES DR5, utilizing advanced Bayesian spectral energy distribution modeling to derive physical properties for approximately 500,000 galaxies across a wide redshift range.
Contribution
It introduces a novel, physically-motivated Bayesian framework with flexible star-formation histories for robust galaxy property inference from JWST data.
Findings
Robust stellar mass measurements down to low-mass galaxies.
Improved constraints on recent star formation activity at z=1-9.
Mitigation of parameter degeneracies through a physically motivated prior.
Abstract
We present the galaxy stellar population catalogue from the JWST Advanced Deep Extragalactic Survey (JADES) Data Release 5 (DR5), providing homogeneous Bayesian inference of physical galaxy properties in GOODS-N and GOODS-S. Using deep JWST/NIRCam and MIRI imaging combined with ancillary multi-wavelength data, we model the spectral energy distributions of ~500,000 sources with the Prospector framework. Our modelling incorporates flexible non-parametric star-formation histories (SFHs), nebular emission, dust attenuation, metallicities, and mid-infrared AGN and dust emission. We adopt an evolving star-forming main sequence (SFMS) prior for modelling the SFHs, which provides a physically-motivated long-term shape of SFHs while retaining non-parametric flexibility. The prior links stellar mass growth and SFR through the observed redshift-dependent SFMS, shaping the global behaviour of the…
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