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Characterizing the Conditional Galaxy Property Distribution using Gaussian Mixture Models

Authors :
Zhang, Yucheng
Pullen, Anthony R.
Somerville, Rachel S.
Breysse, Patrick C.
Forbes, John C.
Yang, Shengqi
Li, Yin
Maniyar, Abhishek S.
Publication Year :
2023

Abstract

Line-intensity mapping (LIM) is a promising technique to constrain the global distribution of galaxy properties. To combine LIM experiments probing different tracers with traditional galaxy surveys and fully exploit the scientific potential of these observations, it is necessary to have a physically motivated modeling framework. As part of developing such a framework, in this work we introduce and model the conditional galaxy property distribution (CGPD), i.e. the distribution of galaxy properties conditioned on the host halo mass and redshift. We consider five galaxy properties, including the galaxy stellar mass, molecular gas mass, galaxy radius, gas phase metallicity and star formation rate (SFR), which are important for predicting the emission lines of interest. The CGPD represents the full distribution of galaxies in the five dimensional property space; many important galaxy distribution functions and scaling relations, such as the stellar mass function and SFR main sequence, can be derived from integrating and projecting it. We utilize two different kinds of cosmological galaxy simulations, a semi-analytic model and the IllustrisTNG hydrodynamic simulation, to characterize the CGPD and explore how well it can be represented using a Gaussian mixture model (GMM). We find that with just a few ($\sim 3$) Gaussian components, a GMM can describe the CGPD of the simulated galaxies to high accuracy for both simulations. The CGPD can be mapped to LIM or other observables by constructing the appropriate relationship between galaxy properties and the relevant observable tracers.<br />Comment: 17 pages, 10 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.11166
Document Type :
Working Paper
Full Text :
https://doi.org/10.3847/1538-4357/accb90