Identifying symbiotic stars with machine learning
Symbiotic stars are interacting binary systems, making them valuable for studying various astronomical phenomena, such as stellar evolution, mass transfer, and accretion processes. Despite recent progress in the discovery of symbiotic stars, a significant discrepancy between the observed population...
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Zusammenfassung: | Symbiotic stars are interacting binary systems, making them valuable for
studying various astronomical phenomena, such as stellar evolution, mass
transfer, and accretion processes. Despite recent progress in the discovery of
symbiotic stars, a significant discrepancy between the observed population of
symbiotic stars and the number predicted by theoretical models. To bridge this
gap, this study utilized machine learning techniques to efficiently identify
new symbiotic stars candidates. Three algorithms (XGBoost, LightGBM, and
Decision Tree) were applied to a dataset of 198 confirmed symbiotic stars and
the resulting model was then used to analyze data from the LAMOST survey,
leading to the identification of 11,709 potential symbiotic stars candidates.
Out of the these potential symbiotic stars candidates listed in the catalog, 15
have spectra available in the SDSS survey. Among these 15 candidates, two
candidates, namely V* V603 Ori and V* GN Tau, have been confirmed as symbiotic
stars. The remaining 11 candidates have been classified as accreting-only
symbiotic star candidates. The other two candidates, one of which has been
identified as a galaxy by both SDSS and LAMOST surveys, and the other
identified as a quasar by SDSS survey and as a galaxy by LAMOST survey. |
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DOI: | 10.48550/arxiv.2307.07993 |