We present a novel machine learning method for predicting the baryonic properties of dark matter only subhalos from N-body simulations. Our model is built using the extremely randomized tree (ERT) algorithm and takes subhalo properties over a wide range of redshifts as its input features. We train our model using the IllustrisTNG simulations to predict blackhole mass, gas mass, magnitudes, star formation rate, stellar mass, and metallicity. We compare the results of our method with a baseline model from previous works, and against a model that only considers the mass history of the subhalo. We find that our new model significantly outperforms both of the other models. We then investigate the predictive power of each input by looking at feat...
We introduce the Illustris Project, a series of large-scale hydrodynamical simulations of galaxy for...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...
Galaxies play a key role in our endeavor to understand how structure formation proceeds in the Unive...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
© 2021 The Author(s) Published by Oxford University Press on behalf of Royal Astronomical Society. T...
We present an artificial neural network design in which past and present-day properties of dark matt...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We develop a machine learning-based framework to predict the Hi content of galaxies using more stra...
We train a machine learning algorithm to learn cosmological structure formation from N-body simulati...
Elucidating the connection between the properties of galaxies and the properties of their hosting ha...
High-resolution cosmological hydrodynamic simulations are currently limited to relatively small volu...
This is a pre-copyedited, author-produced PDF of an article accepted for publication in Monthly Noti...
Efficiently mapping baryonic properties onto dark matter is a major challenge in astrophysics. Altho...
We introduce the Illustris Project, a series of large-scale hydrodynamical simulations of galaxy for...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...
Galaxies play a key role in our endeavor to understand how structure formation proceeds in the Unive...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
© 2021 The Author(s) Published by Oxford University Press on behalf of Royal Astronomical Society. T...
We present an artificial neural network design in which past and present-day properties of dark matt...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We identify subhalos in dark matter–only (DMO) zoom-in simulations that are likely to be disrupted d...
We develop a machine learning-based framework to predict the Hi content of galaxies using more stra...
We train a machine learning algorithm to learn cosmological structure formation from N-body simulati...
Elucidating the connection between the properties of galaxies and the properties of their hosting ha...
High-resolution cosmological hydrodynamic simulations are currently limited to relatively small volu...
This is a pre-copyedited, author-produced PDF of an article accepted for publication in Monthly Noti...
Efficiently mapping baryonic properties onto dark matter is a major challenge in astrophysics. Altho...
We introduce the Illustris Project, a series of large-scale hydrodynamical simulations of galaxy for...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...
We present a comparison of 14 galaxy formation models: 12 different semi-analytical models and 2 hal...