# The QUEST-La Silla AGN Variability Survey: selection of AGN candidates   through optical variability

**Authors:** P. S\'anchez-S\'aez, P. Lira, R. Cartier, N. Miranda, L. C. Ho, P., Ar\'evalo, F. E. Bauer, P. Coppi, C. Yovaniniz

arXiv: 1904.04844 · 2019-05-29

## TL;DR

This study used optical variability data and machine learning to identify AGN candidates over a large sky area, achieving high efficiency and including both point-like and extended sources.

## Contribution

It introduces a Random Forest classification method combining variability and color features to select AGN candidates without morphology cuts.

## Key findings

- High probability AGN candidates identified (up to 5,941 candidates).
- Spectroscopic follow-up confirmed 81.5% of observed candidates as AGN.
- RF2 classifier yields the purest AGN candidate sample.

## Abstract

We used data from the QUEST-La Silla Active Galactic Nuclei (AGN) variability survey to construct light curves for 208,583 sources over $\sim 70$ deg$^2$, with a a limiting magnitude $r \sim 21$. Each light curve has at least 40 epochs and a length of $\geq 200$ days. We implemented a Random Forest algorithm to classify our objects as either AGN or non-AGN according to their variability features and optical colors, excluding morphology cuts. We tested three classifiers, one that only includes variability features (RF1), one that includes variability features and also $r-i$ and $i-z$ colors (RF2), and one that includes variability features and also $g-r$, $r-i$, and $i-z$ colors (RF3). We obtained a sample of high probability candidates (hp-AGN) for each classifier, with 5,941 candidates for RF1, 5,252 candidates for RF2, and 4,482 candidates for RF3. We divided each sample according to their $g-r$ colors, defining blue ($g-r\leq 0.6$) and red sub-samples ($g-r>0.6$). We find that most of the candidates known from the literature belong to the blue sub-samples, which is not necessarily surprising given that, unlike for many literature studies, we do not cut our sample to point-like objects. This means that we can select AGN that have a significant contribution from redshifted starlight in their host galaxies. In order to test the efficiency of our technique we performed spectroscopic follow-up, confirming the AGN nature of 44 among 54 observed sources (81.5\% of efficiency). From the campaign we concluded that RF2 provides the purest sample of AGN candidates.

## Full text

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## Figures

16 figures with captions in the complete paper: https://tomesphere.com/paper/1904.04844/full.md

## References

73 references — full list in the complete paper: https://tomesphere.com/paper/1904.04844/full.md

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Source: https://tomesphere.com/paper/1904.04844