Galaxies play a key role in our endeavor to understand how structure formation proceeds in the Universe. For any precision study of cosmology or galaxy formation, there is a strong demand for huge sets of realistic mock galaxy catalogs, spanning cosmologically significant volumes. For such a daunting task, methods that can produce a direct mapping between dark matter halos from dark matter-only simulations and galaxies are strongly preferred, as producing mocks from full-fledged hydrodynamical simulations or semi-analytical models is too expensive. Here we present a Graph Neural Network-based model that is able to accurately predict key properties of galaxies such as stellar mass, $g-r$ color, star formation rate, gas mass, stellar metallic...
The connections among galaxies, the dark matter haloes where they form and the properties of the lar...
Being able to distinguish between galaxies that have recently undergone major merger events, or are ...
In the local Universe, the efficiency for converting baryonic gas into stars is very low. In dark ma...
We present an artificial neural network design in which past and present-day properties of dark matt...
We present a novel machine learning method for predicting the baryonic properties of dark matter onl...
Efficiently mapping baryonic properties onto dark matter is a major challenge in astrophysics. Altho...
HGC wishes to thank the UKRI Science and Technology Facilities Council for funding this research, un...
Elucidating the connection between the properties of galaxies and the properties of their hosting ha...
We propose a general framework leveraging the halo-galaxy connection to link galaxies observed at di...
Galaxies co-evolve with their host dark matter halos. Models of the galaxy-halo connection, calibrat...
We study the detailed structure of galaxies at redshifts z ‚â• 2 using cosmological simulations...
We introduce the Illustris Project, a series of large-scale hydrodynamical simulations of galaxy for...
Hydrodynamical simulations of galaxy formation have now reached sufficient volume to make precision ...
Hydrodynamical simulations of galaxy formation have now reached sufficient volume to make precision ...
The connections among galaxies, the dark matter haloes where they form and the properties of the lar...
The connections among galaxies, the dark matter haloes where they form and the properties of the lar...
Being able to distinguish between galaxies that have recently undergone major merger events, or are ...
In the local Universe, the efficiency for converting baryonic gas into stars is very low. In dark ma...
We present an artificial neural network design in which past and present-day properties of dark matt...
We present a novel machine learning method for predicting the baryonic properties of dark matter onl...
Efficiently mapping baryonic properties onto dark matter is a major challenge in astrophysics. Altho...
HGC wishes to thank the UKRI Science and Technology Facilities Council for funding this research, un...
Elucidating the connection between the properties of galaxies and the properties of their hosting ha...
We propose a general framework leveraging the halo-galaxy connection to link galaxies observed at di...
Galaxies co-evolve with their host dark matter halos. Models of the galaxy-halo connection, calibrat...
We study the detailed structure of galaxies at redshifts z ‚â• 2 using cosmological simulations...
We introduce the Illustris Project, a series of large-scale hydrodynamical simulations of galaxy for...
Hydrodynamical simulations of galaxy formation have now reached sufficient volume to make precision ...
Hydrodynamical simulations of galaxy formation have now reached sufficient volume to make precision ...
The connections among galaxies, the dark matter haloes where they form and the properties of the lar...
The connections among galaxies, the dark matter haloes where they form and the properties of the lar...
Being able to distinguish between galaxies that have recently undergone major merger events, or are ...
In the local Universe, the efficiency for converting baryonic gas into stars is very low. In dark ma...