Machine learning techniques to select Be star candidates. An application in the OGLE-IV Gaia south ecliptic pole field
M. F. P\'erez-Ortiz, A. Garc\'ia-Varela, A.J. Quiroz, B.E. Sabogal and, J. Hern\'andez

TL;DR
This study develops a robust set of features and applies machine learning classifiers, especially random forests, to identify Be star candidates from large astronomical datasets, improving classification robustness and efficiency.
Contribution
The paper introduces a new robust feature set for variable star classification and demonstrates its effectiveness in identifying Be star candidates using machine learning.
Findings
Random forest outperformed other classifiers in accuracy.
50 Be star candidates identified, including 4 with Herbig Ae/Be-like colours.
Proposed features are more robust to outliers and computationally efficient.
Abstract
Statistical pattern recognition methods have provided competitive solutions for variable star classification at a relatively low computational cost. In order to perform supervised classification, a set of features is proposed and used to train an automatic classification system. Quantities related to the magnitude density of the light curves and their Fourier coefficients have been chosen as features in previous studies. However, some of these features are not robust to the presence of outliers and the calculation of Fourier coefficients is computationally expensive for large data sets. We propose and evaluate the performance of a new robust set of features using supervised classifiers in order to look for new Be star candidates in the OGLE-IV Gaia south ecliptic pole field. We calculated the proposed set of features on six types of variable stars and on a set of Be star candidates…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Astronomical Observations and Instrumentation
