Search for gamma-ray-emitting active galactic nuclei in the fermi-lat unassociated sample using machine learning

M. Doert, M. Errando

Research output: Contribution to journalArticlepeer-review

53 Scopus citations

Abstract

The second Fermi-LAT source catalog (2FGL) is the deepest all-sky survey available in the gamma-ray band. It contains 1873 sources, of which 576 remain unassociated. Machine-learning algorithms can be trained on the gamma-ray properties of known active galactic nuclei (AGNs) to find objects with AGN-like properties in the unassociated sample. This analysis finds 231 high-confidence AGN candidates, with increased robustness provided by intersecting two complementary algorithms. A method to estimate the performance of the classification algorithm is also presented, that takes into account the differences between associated and unassociated gamma-ray sources. Follow-up observations targeting AGN candidates, or studies of multiwavelength archival data, will reduce the number of unassociated gamma-ray sources and contribute to a more complete characterization of the population of gamma-ray emitting AGNs.

Original languageEnglish
Article number41
JournalAstrophysical Journal
Volume782
Issue number1
DOIs
StatePublished - Feb 10 2014

Keywords

  • catalogs
  • galaxies: active
  • gamma rays: galaxies
  • methods: statistical

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