English

Predicting the redshift of gamma-ray loud AGNs using supervised machine learning

High Energy Astrophysical Phenomena 2021-10-27 v1 Instrumentation and Methods for Astrophysics

Abstract

AGNs are very powerful galaxies characterized by extremely bright emissions coming out from their central massive black holes. Knowing the redshifts of AGNs provides us with an opportunity to determine their distance to investigate important astrophysical problems such as the evolution of the early stars, their formation along with the structure of early galaxies. The redshift determination is challenging because it requires detailed follow-up of multi-wavelength observations, often involving various astronomical facilities. Here, we employ machine learning algorithms to estimate redshifts from the observed gamma-ray properties and photometric data of gamma-ray loud AGN from the Fourth Fermi-LAT Catalog. The prediction is obtained with the Superlearner algorithm, using LASSO selected set of predictors. We obtain a tight correlation, with a Pearson Correlation Coefficient of 71.3% between the inferred and the observed redshifts, an average {\Delta}z_norm = 11.6 x 10^-4. We stress that notwithstanding the small sample of gamma-ray loud AGNs, we obtain a reliable predictive model using Superlearner, which is an ensemble of several machine learning models.

Keywords

Cite

@article{arxiv.2107.10952,
  title  = {Predicting the redshift of gamma-ray loud AGNs using supervised machine learning},
  author = {Maria Giovanna Dainotti and Malgorzata Bogdan and Aditya Narendra and Spencer James Gibson and Blazej Miasojedow and Ioannis Liodakis and Agnieszka Pollo and Trevor Nelson and Kamil Wozniak and Zooey Nguyen and Johan Larrson},
  journal= {arXiv preprint arXiv:2107.10952},
  year   = {2021}
}

Comments

29 pages, 19 Figures with a total of 39 panels

R2 v1 2026-06-24T04:26:51.080Z