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research article

Machine-learning Classifiers for Intermediate Redshift Emission-line Galaxies

Zhang, Kai
•
Schlegel, David J.
•
Andrews, Brett H.
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September 20, 2019
The Astrophysical Journal

Classification of intermediate redshift (z = 0.3-0.8) emission line galaxies as star-forming galaxies, composite galaxies, active galactic nuclei (AGNs), or low-ionization nuclear emission regions (LINERs) using optical spectra alone was impossible because the lines used for standard optical diagnostic diagrams: [N II], Ha, and [S II] are redshifted out of the observed wavelength range. In this work, we address this problem using four supervised machine-learning classification algorithms: k-nearest neighbors (KNN), support vector classifier (SVC), random forest (RF), and a multilayer perceptron (MLP) neural network. For input features, we use properties that can be measured from optical galaxy spectra out to z < 0.8-[O III]/H beta, [O III]/H beta, [O III] line width, and stellar velocity dispersion-and four colors (u - g, g - r, r - i, and i - z) corrected to z = 0.1. The labels for the low redshift emission line galaxy training set are determined using standard optical diagnostic diagrams. RF has the best area under curve score for classifying all four galaxy types, meaning the highest distinguishing power. Both the AUC scores and accuracies of the other algorithms are ordered as MLP > SVC > KNN. The classification accuracies with all eight features (and the four spectroscopically determined features only) are 93.4% (92.3%) for star-forming galaxies, 69.4% (63.7%) for composite galaxies, 71.8% (67.3%) for AGNs, and 65.7% (60.8%) for LINERs. The stacked spectrum of galaxies of the same type as determined by optical diagnostic diagrams at low redshift and RF at intermediate redshift are broadly consistent. Our publicly available code (fittps://github.com jzkdtc/MLC_ELGs) and trained models will be instrumental for classifying emission line galaxies in upcoming wide-field spectroscopic surveys.

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Type
research article
DOI
10.3847/1538-4357/ab397e
Web of Science ID

WOS:000487206400007

Author(s)
Zhang, Kai
Schlegel, David J.
Andrews, Brett H.
Comparat, Johan
Schafer, Christoph  
Vazquez Mata, Jose Antonio
Kneib, Jean-Paul  
Yan, Renbin
Date Issued

2019-09-20

Publisher

IOP PUBLISHING LTD

Published in
The Astrophysical Journal
Volume

883

Issue

1

Start page

63

Subjects

Astronomy & Astrophysics

•

galaxies: active

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galaxies: seyfert

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quasars: emission lines

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digital sky survey

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host galaxies

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strong lenses

•

roc curve

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classification

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population

•

rotation

•

field

•

area

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LASTRO  
Available on Infoscience
October 10, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/161932
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