TL;DR
This paper develops a Bayesian population model to analyze dust attenuation in galaxies, revealing complex relationships with galaxy properties and improving understanding of dust effects on observed spectra.
Contribution
The study introduces a flexible 5-D Bayesian model that accounts for correlated variables and non-Gaussian errors, advancing the analysis of dust attenuation across galaxy populations.
Findings
Attenuation slope flattens with increasing optical depth.
Optical depth increases with star formation rate.
Redshift evolution varies with galaxy mass and star formation.
Abstract
Dust plays a pivotal role in determining the observed spectral energy distribution (SED) of galaxies. Yet our understanding of dust attenuation is limited and our observations suffer from the dust-metallicity-age degeneracy in SED fitting (single galaxies), large individual variances (ensemble measurements), and the difficulty in properly dealing with uncertainties (statistical considerations). In this study, we create a population Bayesian model to rigorously account for correlated variables and non-Gaussian error distributions and demonstrate the improvement over a simple Bayesian model. We employ a flexible 5-D linear interpolation model for the parameters that control dust attenuation curves as a function of stellar mass, star formation rate (SFR), metallicity, redshift, and inclination. Our setup allows us to determine the complex relationships between dust attenuation and these…
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