Photometric classification of quasars from RCS-2 using Random Forest
Author
dc.contributor.author
Carrasco, D.
Author
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Barrientos, L.
Author
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Pichara, K.
Author
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Anguita, T.
Author
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Murphy, D.
Author
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Gilbank, D.
Author
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Gladders, M.
Author
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Yee, H.
Author
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Hsieh, B.
Author
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López Morales, Sebastián
Admission date
dc.date.accessioned
2016-01-04T17:49:42Z
Available date
dc.date.available
2016-01-04T17:49:42Z
Publication date
dc.date.issued
2015
Cita de ítem
dc.identifier.citation
Astronomy & Astrophysics 584, A44 (2015)
en_US
Identifier
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10.1051/0004-6361/201525752
Identifier
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https://repositorio.uchile.cl/handle/2250/136142
Abstract
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The classification and identification of quasars is fundamental to many astronomical research areas. Given the large volume of photometric
survey data available in the near future, automated methods for doing so are required. In this article, we present a new
quasar candidate catalog from the Red-Sequence Cluster Survey 2 (RCS-2), identified solely from photometric information using an
automated algorithm suitable for large surveys. The algorithm performance is tested using a well-defined SDSS spectroscopic sample
of quasars and stars. The Random Forest algorithm constructs the catalog from RCS-2 point sources using SDSS spectroscopicallyconfirmed
stars and quasars. The algorithm identifies putative quasars from broadband magnitudes (g, r, i, z) and colors. Exploiting
NUV GALEX measurements for a subset of the objects, we refine the classifier by adding new information. An additional subset
of the data with WISE W1 and W2 bands is also studied. Upon analyzing 542 897 RCS-2 point sources, the algorithm identified
21 501 quasar candidates with a training-set-derived precision (the fraction of true positives within the group assigned quasar status)
of 89.5% and recall (the fraction of true positives relative to all sources that actually are quasars) of 88.4%. These performance metrics
improve for the GALEX subset: 6529 quasar candidates are identified from 16 898 sources, with a precision and recall of 97.0% and
97.5%, respectively. Algorithm performance is further improved when WISE data are included, with precision and recall increasing to
99.3% and 99.1%, respectively, for 21 834 quasar candidates from 242 902 sources. We compiled our final catalog (38 257) by merging
these samples and removing duplicates. An observational follow up of 17 bright (r < 19) candidates with long-slit spectroscopy
at DuPont telescope (LCO) yields 14 confirmed quasars. The results signal encouraging progress in the classification of point sources
with Random Forest algorithms to search for quasars within current and future large-area photometric surveys.