Machine Learning Classifiers for Intermediate Redshift Emission Line Galaxies
Kai Zhang (LBNL), David J. Schlegel (LBNL), Brett H. Andrews, (University of Pittsburg), Johan Comparat (UAM/CSIC, Universidad Aut\'onoma, de Madrid, MPE), Christoph Sch\"afer (EPFL), Jose Antonio Vazquez Mata, (Universidad Nacional Aut\'onoma de M\'exico)

TL;DR
This paper develops machine learning classifiers to identify galaxy types at intermediate redshifts using optical spectra and colors, overcoming the limitations of traditional diagnostic diagrams.
Contribution
It introduces four supervised machine learning algorithms trained on low-redshift data to classify emission line galaxies at higher redshifts, with RF performing best.
Findings
Random forest achieved the highest AUC scores.
Classification accuracies ranged from 65.7% to 93.4%.
The models and code are publicly available for future surveys.
Abstract
Classification of intermediate redshift ( = 0.3--0.8) emission line galaxies as star-forming galaxies, composite galaxies, active galactic nuclei (AGN), or low-ionization nuclear emission regions (LINERs) using optical spectra alone was impossible because the lines used for standard optical diagnostic diagrams: [NII], H, and [SII] are redshifted out of the observed wavelength range. In this work, we address this problem using four supervised machine learning classification algorithms: -nearest neighbors (KNN), support vector classifier (SVC), random forest (RF), and a multi-layer perceptron (MLP) neural network. For input features, we use properties that can be measured from optical galaxy spectra out to ---[OIII]/H, [OII]/H, [OIII] line width, and stellar velocity dispersion---and four colors (, , , and ) corrected to .…
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