Spectroscopic age estimates for APOGEE red-giant stars: Precise spatial and kinematic trends with age in the Galactic disc
F. Anders, P. Gispert, B. Ratcliffe, C. Chiappini, I. Minchev, S., Nepal, A. B. A. Queiroz, J. A. S. Amarante, T. Antoja, G. Casali, L., Casamiquela, A. Khalatyan, A. Miglio, H. Perottoni, M. Schultheis

TL;DR
This study estimates precise stellar ages for a large sample of APOGEE red giants using machine learning, revealing detailed spatial and kinematic trends with age in the Galactic disc, including metallicity gradients and migration patterns.
Contribution
It introduces a new machine learning-based method to estimate stellar ages for a large dataset, enabling detailed analysis of Galactic disc properties as a function of age.
Findings
Confirmed a steeper metallicity gradient for 2-5 Gyr old stars.
Detected a power-law trend in abundance gradient dispersion indicating smooth radial migration.
Extended the age-velocity dispersion relation across a large Galactic disc region.
Abstract
Over the last few years, many studies have found an empirical relationship between the abundance of a star and its age. Here we estimate spectroscopic stellar ages for 178 825 red-giant stars observed by the APOGEE survey with a median statistical uncertainty of 17%. To this end, we use the supervised machine learning technique XGBoost, trained on a high-quality dataset of 3060 red-giant and red-clump stars with asteroseismic ages observed by both APOGEE and Kepler. After verifying the obtained age estimates with independent catalogues, we investigate some of the classical chemical, positional, and kinematic relationships of the stars as a function of their age. We find a very clear imprint of the outer-disc flare in the age maps and confirm the recently found split in the local age-metallicity relation. We present new and precise measurements of the Galactic radial metallicity gradient…
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Taxonomy
TopicsData Analysis with R
