TY - JOUR
T1 - Painting galaxies into dark matter haloes using machine learning
AU - Agarwal, Shankar
AU - Davé, Romeel
AU - Bassett, Bruce A.
N1 - Funding Information:
tion. RD further acknowledges long-term visitor support provided by the Simons Foundation’s Center for Computational Astrophysics and the Distinguished Visitor Program at Space Telescope Science Institute. The MUFASA simulations were run on the Pumbaa astrophysics computing cluster hosted at the University of the Western Cape, which was generously funded by UWC’s Office of the Deputy Vice Chancellor, and were run with revision e77f814 of GIZMO hosted at https://bitbucket.org/rthompson/gizmo.
Funding Information:
The authors thank the referee for providing constructive comments and help in improving the contents of this paper. SA acknowledges Laboratoire Univers et Théories at the Observatoire de Paris, for allowing its computing resources be used for running SCIKIT-LEARNML library. RD acknowledges support from the South African Research Chairs Initiative and the South African National Research Foundation. RD further acknowledges long-term visitor support provided by the Simons Foundation's Center for ComputationalAstrophysics and the Distinguished Visitor Program at Space Telescope Science Institute. The MUFASA simulations were run on the Pumbaa astrophysics computing cluster hosted at the University of the Western Cape, whichwas generously funded byUWC's Office of the Deputy Vice Chancellor, and were run with revision e77f814 of GIZMO hosted at https://bitbucket.org/rthompson/gizmo.
Funding Information:
The authors thank the referee for providing constructive comments and help in improving the contents of this paper. SA acknowledges Laboratoire Univers et Théories at the Observatoire de Paris, for allowing its computing resources be used for running SCIKIT-LEARN ML library. RD acknowledges support from the South African Research Chairs Initiative and the South African National Research Founda-
Publisher Copyright:
© 2018 The Author(s).
PY - 2018/8/1
Y1 - 2018/8/1
N2 - We develop amachine learning (ML) framework to populate large darkmatter-only simulations with baryonic galaxies. Our ML framework takes input halo properties including halo mass, environment, spin, and recent growth history, and outputs central galaxy and halo baryonic properties, including stellar mass (M*), star formation rate (SFR), metallicity (Z), neutral (HI), and molecular (H2) hydrogen mass. We apply this to the MUFASA cosmological hydrodynamic simulation, and show that it recovers the mean trends of output quantities with halo mass highly accurately, including following the sharp drop in SFR and gas in quenched massive galaxies. However, the scatter around themean relations is underpredicted. Examining galaxies individually, at z = 0, the stellar mass and metallicity are accurately recovered (σ ≲ 0.2 dex), but SFR and HI show larger scatter (σ ≳ 0.3 dex); these values improve somewhat at z = 1 and 2. Remarkably, ML quantitatively recovers second parameter trends in galaxy properties, e.g. that galaxies with higher gas content and lower metallicity have higher SFR at a given M*. Testing various ML algorithms, we find that none perform significantly better than the others, nor does ensembling improve performance, likely because none of the algorithms reproduce the large observed scatter around the mean properties. For the random forest algorithm, we find that halo mass and nearby (~200 kpc) environment are the most important predictive variables followed by growth history, while halo spin and ~Mpc-scale environment are not important. Finally, we study the impact of additionally inputting key baryonic properties M*, SFR and Z, as would be available e.g. from an equilibrium model, and show that particularly providing the SFR enables HI to be recovered substantially more accurately.
AB - We develop amachine learning (ML) framework to populate large darkmatter-only simulations with baryonic galaxies. Our ML framework takes input halo properties including halo mass, environment, spin, and recent growth history, and outputs central galaxy and halo baryonic properties, including stellar mass (M*), star formation rate (SFR), metallicity (Z), neutral (HI), and molecular (H2) hydrogen mass. We apply this to the MUFASA cosmological hydrodynamic simulation, and show that it recovers the mean trends of output quantities with halo mass highly accurately, including following the sharp drop in SFR and gas in quenched massive galaxies. However, the scatter around themean relations is underpredicted. Examining galaxies individually, at z = 0, the stellar mass and metallicity are accurately recovered (σ ≲ 0.2 dex), but SFR and HI show larger scatter (σ ≳ 0.3 dex); these values improve somewhat at z = 1 and 2. Remarkably, ML quantitatively recovers second parameter trends in galaxy properties, e.g. that galaxies with higher gas content and lower metallicity have higher SFR at a given M*. Testing various ML algorithms, we find that none perform significantly better than the others, nor does ensembling improve performance, likely because none of the algorithms reproduce the large observed scatter around the mean properties. For the random forest algorithm, we find that halo mass and nearby (~200 kpc) environment are the most important predictive variables followed by growth history, while halo spin and ~Mpc-scale environment are not important. Finally, we study the impact of additionally inputting key baryonic properties M*, SFR and Z, as would be available e.g. from an equilibrium model, and show that particularly providing the SFR enables HI to be recovered substantially more accurately.
KW - Cosmology: theory
KW - Galaxies: evolution
KW - Large-scale structure of Universe
UR - http://www.scopus.com/inward/record.url?scp=85051469498&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85051469498&partnerID=8YFLogxK
U2 - 10.1093/MNRAS/STY1169
DO - 10.1093/MNRAS/STY1169
M3 - Article
AN - SCOPUS:85051469498
SN - 0035-8711
VL - 478
SP - 3410
EP - 3422
JO - Monthly Notices of the Royal Astronomical Society
JF - Monthly Notices of the Royal Astronomical Society
IS - 3
ER -