Revealing the Galaxy–Halo Connection through Machine Learning

Author:

Hausen RyanORCID,Robertson Brant E.ORCID,Zhu HanjueORCID,Gnedin Nickolay Y.ORCID,Madau PieroORCID,Schneider Evan E.ORCID,Villasenor BrunoORCID,Drakos Nicole E.ORCID

Abstract

Abstract Understanding the connections between galaxy stellar mass, star formation rate, and dark matter halo mass represents a key goal of the theory of galaxy formation. Cosmological simulations that include hydrodynamics, physical treatments of star formation, feedback from supernovae, and the radiative transfer of ionizing photons can capture the processes relevant for establishing these connections. The complexity of these physics can prove difficult to disentangle and obfuscate how mass-dependent trends in the galaxy population originate. Here, we train a machine-learning method called Explainable Boosting Machines (EBMs) to infer how the stellar mass and star formation rate of nearly 6 million galaxies simulated by the Cosmic Reionization on Computers project depend on the physical properties of halo mass, the peak circular velocity of the galaxy during its formation history v peak, cosmic environment, and redshift. The resulting EBM models reveal the relative importance of these properties in setting galaxy stellar mass and star formation rate, with v peak providing the most dominant contribution. Environmental properties provide substantial improvements for modeling the stellar mass and star formation rate in only ≲10% of the simulated galaxies. We also provide alternative formulations of EBM models that enable low-resolution simulations, which cannot track the interior structure of dark matter halos, to predict the stellar mass and star formation rate of galaxies computed by high-resolution simulations with detailed baryonic physics.

Funder

National Aeronautics and Space Administration

NSF MRI

National Science Foundation

DOE INCITE award

U.S. Department of Energy

Publisher

American Astronomical Society

Subject

Space and Planetary Science,Astronomy and Astrophysics

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Simultaneous derivation of galaxy physical properties with multimodal deep learning;Monthly Notices of the Royal Astronomical Society;2024-06-22

2. Multi-epoch machine learning 2: identifying physical drivers of galaxy properties in simulations;Monthly Notices of the Royal Astronomical Society;2023-06-16

3. MultiCAM: a multivariable framework for connecting the mass accretion history of haloes with their properties;Monthly Notices of the Royal Astronomical Society;2023-06-13

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