Quasar Selection Based on Photometric Variability
C. L. MacLeod, K. Brooks, Z. Ivezic, C. S. Kochanek, R. Gibson, A., Meisner, S. Kozlowski, B. Sesar, A. C. Becker, W. de Vries

TL;DR
This paper presents a variability-based method for quasar selection using SDSS light curves, demonstrating improved efficiency and completeness over traditional color-based methods, with promising applications for upcoming large sky surveys.
Contribution
The authors develop a quasar selection technique based on a damped random walk variability model, enhancing efficiency and completeness compared to previous methods, especially for future surveys like LSST.
Findings
Variability selection achieves 75% efficiency at 98% completeness.
Including the damping time scale (tau) improves selection performance.
Method is effective for upcoming large sky surveys like LSST.
Abstract
We develop a method for separating quasars from other variable point sources using SDSS Stripe 82 light curve data for ~10,000 variable objects. To statistically describe quasar variability, we use a damped random walk model parametrized by a damping time scale, tau, and an asymptotic amplitude (structure function), SF_inf. With the aid of an SDSS spectroscopically confirmed quasar sample, we demonstrate that variability selection in typical extragalactic fields with low stellar density can deliver complete samples with reasonable purity (or efficiency, E). Compared to a selection method based solely on the slope of the structure function, the inclusion of the tau information boosts E from 60% to 75% while maintaining a highly complete sample (98%) even in the absence of color information. For a completeness of C=90%, E is boosted from 80% to 85%. Conversely, C improves from 90% to 97%…
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Taxonomy
TopicsSatellite Image Processing and Photogrammetry · Color Science and Applications
