Youth analysis of near infrared spectra of young low-mass stars and brown dwarfs
V. Almendros-Abad, K. Mu\v{z}i\'c, A. Moitinho, A. Krone-Martins and, K. Kubiak

TL;DR
This study develops a machine learning-based method using near-infrared spectra to accurately identify young low-mass stars and brown dwarfs, focusing on gravity-sensitive features and spectral indices.
Contribution
It introduces new spectral indices and demonstrates that machine learning on NIR spectra effectively distinguishes young objects from field stars.
Findings
Achieved spectral typing precision below 1 subtype
Developed a new gravity-sensitive index (TLI-g) with superior performance
H-band shape and specific absorption features are key for gravity classification
Abstract
We aim at building a method that efficiently identifies young low-mass stars and brown dwarfs from low-resolution near-infrared spectra, by studying gravity-sensitive features and their evolution with age. We built a dataset composed of all publicly available (2800) near-infrared spectra of dwarfs with spectral types between M0 and L3. First, we investigate methods for the derivation of the spectral type and extinction using comparison to spectral templates, and various spectral indices. Then, we examine gravity-sensitive spectral indices and apply machine learning methods, in order to efficiently separate young (10 Myr) objects from the field. Using a set of six spectral indices for spectral typing, including two newly defined ones (TLI-J and TLI-K), we are able to achieve a precision below 1 spectral subtype across the entire spectral type range. We define a new…
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