English

GRB Redshift Classifier to Follow-up High-Redshift GRBs Using Supervised Machine Learning

High Energy Astrophysical Phenomena 2025-01-09 v3

Abstract

Gamma-ray bursts (GRBs) are intense, short-lived bursts of gamma-ray radiation observed up to a high redshift (z10z \sim 10) due to their luminosities. Thus, they can serve as cosmological tools to probe the early Universe. However, we need a large sample of highz-z GRBs, currently limited due to the difficulty in securing time at the large aperture Telescopes. Thus, it is painstaking to determine quickly whether a GRB is highzz or lowz-z, which hampers the possibility of performing rapid follow-up observations. Previous efforts to distinguish between high- and lowz-z GRBs using GRB properties and machine learning (ML) have resulted in limited sensitivity. In this study, we aim to improve this classification by employing an ensemble ML method on 251 GRBs with measured redshifts and plateaus observed by the Neil Gehrels Swift Observatory. Incorporating the plateau phase with the prompt emission, we have employed an ensemble of classification methods to enhance the sensitivity unprecedentedly. Additionally, we investigate the effectiveness of various classification methods using different redshift thresholds, zthresholdz_{threshold}=ztz_t at zt=z_{t}= 2.0, 2.5, 3.0, and 3.5. We achieve a sensitivity of 87\% and 89\% with a balanced sampling for both zt=3.0z_{t}=3.0 and zt=3.5z_{t}=3.5, respectively, representing a 9\% and 11\% increase in the sensitivity over Random Forest used alone. Overall, the best results are at zt=3.5z_{t} = 3.5, where the difference between the sensitivity of the training set and the test set is the smallest. This enhancement of the proposed method paves the way for new and intriguing follow-up observations of highz-z GRBs.

Keywords

Cite

@article{arxiv.2408.08763,
  title  = {GRB Redshift Classifier to Follow-up High-Redshift GRBs Using Supervised Machine Learning},
  author = {Maria Giovanna Dainotti and Shubham Bhardwaj and Christopher Cook and Joshua Ange and Nishan Lamichhane and Malgorzata Bogdan and Monnie McGee and Pavel Nadolsky and Milind Sarkar and Agnieszka Pollo and Shigehiro Nagataki},
  journal= {arXiv preprint arXiv:2408.08763},
  year   = {2025}
}

Comments

45 pages, 16 Figures (6 Figures with single panel, 4 Figures with 8 panels, 2 Figures with 4 panels, 1 Figure with 12 panels, 1 figure with 6 panels, 2 Figure with 2 panels), 6 Tables, accepted for publication in ApJS

R2 v1 2026-06-28T18:14:46.647Z