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Machine Learning Detects Multiplicity of the First Stars in Stellar Archaeology Data

Authors :
Tilman Hartwig
Miho N. Ishigaki
Chiaki Kobayashi
Nozomu Tominaga
Ken’ichi Nomoto
Source :
The Astrophysical Journal, Vol 946, Iss 1, p 20 (2023)
Publication Year :
2023
Publisher :
IOP Publishing, 2023.

Abstract

In unveiling the nature of the first stars, the main astronomical clue is the elemental compositions of the second generation of stars, observed as extremely metal-poor (EMP) stars, in the Milky Way. However, no observational constraint was available on their multiplicity, which is crucial for understanding early phases of galaxy formation. We develop a new data-driven method to classify observed EMP stars into mono- or multi-enriched stars with support vector machines. We also use our own nucleosynthesis yields of core-collapse supernovae with mixing fallback that can explain many of the observed EMP stars. Our method predicts, for the first time, that 31.8% ± 2.3% of 462 analyzed EMP stars are classified as mono-enriched. This means that the majority of EMP stars are likely multi-enriched, suggesting that the first stars were born in small clusters. Lower-metallicity stars are more likely to be enriched by a single supernova, most of which have high carbon enhancement. We also find that Fe, Mg. Ca, and C are the most informative elements for this classification. In addition, oxygen is very informative despite its low observability. Our data-driven method sheds a new light on solving the mystery of the first stars from the complex data set of Galactic archeology surveys.

Details

Language :
English
ISSN :
15384357
Volume :
946
Issue :
1
Database :
Directory of Open Access Journals
Journal :
The Astrophysical Journal
Publication Type :
Academic Journal
Accession number :
edsdoj.16f210444f1d855e8dec6d3912db
Document Type :
article
Full Text :
https://doi.org/10.3847/1538-4357/acbcc6