Detection of hot subdwarf binaries and sdB stars using machine learning methods and a large sample of Gaia XP spectra
M. Ambrosch, C. Viscasillas V\'azquez, E. Solano, A. Ulla, X. P\'erez-Couto, E. P\'erez-Fern\'andez, A. Med\v{z}i\=unas, M. Manteiga, C. Dafonte, A. Drazdauskas, L. Magrini, \v{S}. Mikolaitis, V. \v{S}atas

TL;DR
This study employs machine learning on Gaia XP spectra of approximately 20,000 hot subdwarf candidates to classify their binary status and analyze their physical properties, revealing correlations with variability and environmental factors.
Contribution
The paper introduces a novel approach combining dimensionality reduction and machine learning to classify hot subdwarfs and their binarity using Gaia XP spectra on a large sample.
Findings
Most binaries cluster in two filaments linked to main sequence companions.
Binary fractions exceed 60% among active hot subdwarfs.
Binarity and environmental density significantly influence hot subdwarf evolution.
Abstract
Hot subdwarfs (hot sds) are compact, evolved stars near the Extreme Horizontal Branch (EHB) and are key to understanding stellar evolution and the ultraviolet excess in galaxies. We extend our previous analysis of Gaia XP spectra of hot subdwarf stars to a much larger sample, enabling a comprehensive study of their physical and binary properties. Our goal is to identify patterns in Gaia XP spectra, investigate binarity, and assess the influence of parameters such as temperature, helium abundance, and variability. We analyse approximately 20000 hot subdwarf candidates selected from the literature, combining Gaia XP data with published parameters. We apply Uniform Manifold Approximation and Projection (UMAP) to the XP coefficients, which represent the Gaia XP spectra in a compact, feature-based form, to construct a similarity map. We then use self-organizing maps (SOMs) and convolutional…
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