We develop a Bayesian Machine Learning framework called BINGO (Bayesian INference for Galactic archaeOlogy) centred around a Bayesian neural network. After being trained on the Apache Point Observatory Galactic Evolution Experiment (APOGEE) and Kepler asteroseismic age data, BINGO is used to obtain precise relative stellar age estimates with uncertainties for the APOGEE stars. We carefully construct a training set to minimize bias and apply BINGO to a stellar population that is similar to our training set. We then select the 17 305 stars with ages from BINGO and reliable kinematic properties obtained from Gaia DR2. By combining the age and chemo-kinematical information, we dissect the Galactic disc stars into three components, namely the th...
This article has been accepted for publication in Monthly Notices of the Royal Astronomical Society,...
Understanding the chemical history of the Galaxy is essential for developing theories and models for...
We develop a hybrid model of galactic chemical evolution that combines a multiring computation of ch...
We develop a Bayesian Machine Learning framework called BINGO (Bayesian INference for Galactic archa...
We employ our Bayesian Machine Learning framework BINGO (Bayesian INference for Galactic archaeOlogy...
We employ state-of-the-art statistical inference and Machine Learning techniques to understand the f...
Context. Thanks to ongoing efforts to compute accurate stellar ages, we are able to characterise sta...
The measurement of the structure of stellar populations in the Milky Way disc places fundamental con...
The stellar disc of the Milky Way shows complex spatial and abundance structure that is central to u...
Context. The presence of [$\alpha$/Fe]-[Fe/H] bi-modality in the Milky Way disc has animated the Gal...
International audienceContext. The formation of the Galactic disc is an enthusiastically debated iss...
We study the evolution of Milky Way thick and thin discs in the light of the most recent observation...
We map the stellar age distribution (≲1 Gyr) across a 6 kpc × 6 kpc area of the Galactic disc in o...
This article has been accepted for publication in Monthly Notices of the Royal Astronomical Society,...
Understanding the chemical history of the Galaxy is essential for developing theories and models for...
We develop a hybrid model of galactic chemical evolution that combines a multiring computation of ch...
We develop a Bayesian Machine Learning framework called BINGO (Bayesian INference for Galactic archa...
We employ our Bayesian Machine Learning framework BINGO (Bayesian INference for Galactic archaeOlogy...
We employ state-of-the-art statistical inference and Machine Learning techniques to understand the f...
Context. Thanks to ongoing efforts to compute accurate stellar ages, we are able to characterise sta...
The measurement of the structure of stellar populations in the Milky Way disc places fundamental con...
The stellar disc of the Milky Way shows complex spatial and abundance structure that is central to u...
Context. The presence of [$\alpha$/Fe]-[Fe/H] bi-modality in the Milky Way disc has animated the Gal...
International audienceContext. The formation of the Galactic disc is an enthusiastically debated iss...
We study the evolution of Milky Way thick and thin discs in the light of the most recent observation...
We map the stellar age distribution (≲1 Gyr) across a 6 kpc × 6 kpc area of the Galactic disc in o...
This article has been accepted for publication in Monthly Notices of the Royal Astronomical Society,...
Understanding the chemical history of the Galaxy is essential for developing theories and models for...
We develop a hybrid model of galactic chemical evolution that combines a multiring computation of ch...