TL;DR
This paper introduces a new automated spectral classification tool for OB stars using machine learning algorithms, achieving around 70% accuracy across diverse datasets and spectral features.
Contribution
The study develops and compares novel RF-based methods, including KDE-RF, for classifying OB star sub-types from spectral line data, demonstrating robustness and applicability to various data qualities.
Findings
Achieved ~70% classification accuracy across multiple datasets.
Full set of 17 spectral lines improves classification performance.
Proposed a reduced 10-feature scheme for lower S/N data.
Abstract
(abridged) We develop a tool for the automated spectral classification of OB stars according to their sub-types. We use the regular Random Forest (RF) algorithm, the Probabilistic RF (PRF), and we introduce the KDE-RF method which is a combination of the Kernel-Density Estimation and the RF algorithm. We train the algorithms on the Equivalent Width (EW) of characteristic absorption lines (features) measured in high-quality spectra from large Galactic (LAMOST,GOSSS) and extragalactic surveys (2dF,VFTS) with available spectral-types and luminosity classes. We find that the overall accuracy score is 70% with similar results across all approaches. We show that the full set of 17 spectral lines is needed to reach the maximum performance per spectral class. We apply our model in other observational data sets providing examples of potential application of our classifier on real science…
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