Using autoencoders and deep transfer learning to determine the stellar parameters of 286 CARMENES M dwarfs
P. Mas-Buitrago, A. Gonz\'alez-Marcos, E. Solano, V. M. Passegger, M., Cort\'es-Contreras, J. Ordieres-Mer\'e, A. Bello-Garc\'ia, J. A. Caballero,, A. Schweitzer, H. M. Tabernero, D. Montes, C. Cifuentes

TL;DR
This paper introduces a deep transfer learning method using autoencoders to accurately determine stellar parameters of M dwarfs from spectra, effectively reducing synthetic-observation discrepancies.
Contribution
The study presents a novel feature-based deep transfer learning approach with autoencoders for stellar parameter estimation, addressing the synthetic gap issue in M dwarf spectra analysis.
Findings
Accurately estimated stellar parameters for 286 M dwarfs.
Reduced differences between synthetic and observed spectra in a new feature space.
Mitigated metallicity deviations common in previous deep learning methods.
Abstract
Deep learning (DL) techniques are a promising approach among the set of methods used in the ever-challenging determination of stellar parameters in M dwarfs. In this context, transfer learning could play an important role in mitigating uncertainties in the results due to the synthetic gap (i.e. difference in feature distributions between observed and synthetic data). We propose a feature-based deep transfer learning (DTL) approach based on autoencoders to determine stellar parameters from high-resolution spectra. Using this methodology, we provide new estimations for the effective temperature, surface gravity, metallicity, and projected rotational velocity for 286 M dwarfs observed by the CARMENES survey. Using autoencoder architectures, we projected synthetic PHOENIX-ACES spectra and observed CARMENES spectra onto a new feature space of lower dimensionality in which the differences…
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Taxonomy
MethodsSparse Evolutionary Training
