The application of machine learning (ML) techniques to simulated cosmological data aids in the development of predictive theories of galaxy formation, evolution, and the nature of dark matter (DM) in the Universe. We present the results of a simple binary classification model for predicting the dark matter fraction (DMF) of simulated galaxies using ML techniques such as principal component analysis and random forest (RF) classifier algorithms. The source of the data was The Next Generation Illustris (IllustrisTNG) simulations, which is a series of gravo-magneto-hydrodynamical simulations of the mock Universe. The data consisted of a class distribution imbalanced dataset of 2446 high mass satellite galaxies (i.e., stellar masses ≥ 109 M☉) fr...
We propose a random forest (RF) machine learning approach to determine the accreted stellar mass fra...
We present a novel method to infer the Dark Matter (DM) content and spatial distribution within gala...
International audienceWe present a novel method to infer the Dark Matter (DM) content and spatial di...
International audienceWe are interested in detecting the cosmological imprint on properties of prese...
International audienceWe are interested in detecting the cosmological imprint on properties of prese...
International audienceWe are interested in detecting the cosmological imprint on properties of prese...
We explore the capability of deep learning to classify cosmic structures. In cosmological simulation...
We demonstrate that highly accurate joint redshift-stellar mass probability distribution functions (...
We demonstrate that highly accurate joint redshift–stellar mass probability distribution functions (...
We investigate machine learning (ML) techniques for predicting the number of galaxies (N gal) that o...
International audienceWe demonstrate that highly accurate joint redshift–stellar mass probability di...
ABSTRACT We demonstrate that highly accurate joint redshift–stellar mass probability distri...
We demonstrate that highly accurate joint redshift-stellar mass probability distribution functions (...
In this work, I investigate the possibility of finding a data-driven solution to the problem of auto...
International audienceWe present a novel method to infer the Dark Matter (DM) content and spatial di...
We propose a random forest (RF) machine learning approach to determine the accreted stellar mass fra...
We present a novel method to infer the Dark Matter (DM) content and spatial distribution within gala...
International audienceWe present a novel method to infer the Dark Matter (DM) content and spatial di...
International audienceWe are interested in detecting the cosmological imprint on properties of prese...
International audienceWe are interested in detecting the cosmological imprint on properties of prese...
International audienceWe are interested in detecting the cosmological imprint on properties of prese...
We explore the capability of deep learning to classify cosmic structures. In cosmological simulation...
We demonstrate that highly accurate joint redshift-stellar mass probability distribution functions (...
We demonstrate that highly accurate joint redshift–stellar mass probability distribution functions (...
We investigate machine learning (ML) techniques for predicting the number of galaxies (N gal) that o...
International audienceWe demonstrate that highly accurate joint redshift–stellar mass probability di...
ABSTRACT We demonstrate that highly accurate joint redshift–stellar mass probability distri...
We demonstrate that highly accurate joint redshift-stellar mass probability distribution functions (...
In this work, I investigate the possibility of finding a data-driven solution to the problem of auto...
International audienceWe present a novel method to infer the Dark Matter (DM) content and spatial di...
We propose a random forest (RF) machine learning approach to determine the accreted stellar mass fra...
We present a novel method to infer the Dark Matter (DM) content and spatial distribution within gala...
International audienceWe present a novel method to infer the Dark Matter (DM) content and spatial di...