English

Gamma-Ray Active Galactic Nucleus Type through Machine-Learning Algorithms

High Energy Astrophysical Phenomena 2012-12-12 v2

Abstract

The Fermi Gamma-ray Space Telescope is producing the most detailed inventory of the gamma-ray sky to date. Despite tremendous achievements approximately 25% of all Fermi extragalactic sources in the Second Fermi LAT Catalogue (2FGL) are listed as active galactic nuclei (AGN) of uncertain type. Typically, these are suspected blazar candidates without a conclusive optical spectrum or lacking spectroscopic observations. Here, we explore the use of machine-learning algorithms - Random Forests and Support Vector Machines - to predict specific AGN subclass based on observed gamma-ray spectral properties. After training and testing on identified/associated AGN from the 2FGL we find that 235 out of 269 AGN of uncertain type have properties compatible with gamma-ray BL Lacs and flat-spectrum radio quasars with accuracy rates of 85%. Additionally, direct comparison of our results with class predictions made after following the infrared colour-colour space of Massaro et al. (2012) show that the agreement rate is over four-fifths for 54 overlapping sources, providing independent cross validation. These results can help tailor follow-up spectroscopic programs and inform future pointed surveys with ground-based Cherenkov telescopes.

Keywords

Cite

@article{arxiv.1209.4359,
  title  = {Gamma-Ray Active Galactic Nucleus Type through Machine-Learning Algorithms},
  author = {T. Hassan and N. Mirabal and J. L. Contreras and I. Oya},
  journal= {arXiv preprint arXiv:1209.4359},
  year   = {2012}
}

Comments

7 pages, 3 figures, 3 tables, accepted for publication in MNRAS. Complete tables can be retrieved at http://cta.gae.ucm.es/gae/?q=node/132

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