GRB optical and X-ray plateau properties classifier using unsupervised machine learning

Author:

Bhardwaj Shubham12ORCID,Dainotti Maria G123,Venkatesh Sachin4,Narendra Aditya56,Kalsi Anish7,Rinaldi Enrico8,Pollo Agnieszka59

Affiliation:

1. National Astronomical Observatory of Japan , 2 Chome-21-1 Osawa, Mitaka, Tokyo 181-8588 , Japan

2. Department of Astronomical Sciences, The Graduate University for Advanced Studies , SOKENDAI, Shonankokusaimura, Hayama, Miura District, Kanagawa 240-0193 , Japan

3. Space Science Institute , 4765 Walnut St Ste B, Boulder, CO 80301 , USA

4. School of Physics, Georgia Institute of Technology , North Avenue, Atlanta, GA 30332 , USA

5. Astronomical Observatory of Jagiellonian University , Orla 171, 30-244 Krakow , Poland

6. Doctoral School of Exact and Natural Sciences, Jagiellonian University , 30-348 Krakow , Poland

7. Delhi Technological University , New Delhi, 110042 , India

8. Interdisciplinary Theoretical and Mathematical Science Program , RIKEN (iTHEMS), 2-1 Hirosawa, Wako, Saitama 351-0198 , Japan

9. National Centre for Nuclear Research , 02-093 Warsaw , Poland

Abstract

ABSTRACT The division of gamma-ray bursts (GRBs) into different classes, other than the ‘short’ and ‘long’, has been an active field of research. We investigate whether GRBs can be classified based on a broader set of parameters, including prompt and plateau emission ones. Observational evidence suggests the existence of more GRB subclasses, but results so far are either conflicting or not statistically significant. The novelty here is producing a machine-learning-based classification of GRBs using their observed X-rays and optical properties. We used two data samples: the first, composed of 203 GRBs, is from the Neil Gehrels Swift Observatory (Swift/XRT), and the latter, composed of 134 GRBs, is from the ground-based Telescopes and Swift/UVOT. Both samples possess the plateau emission (a flat part of the light curve happening after the prompt emission, the main GRB event). We have applied the Gaussian mixture model (GMM) to explore multiple parameter spaces and subclass combinations to reveal if there is a match between the current observational subclasses and the statistical classification. With these samples and the algorithm, we spot a few microtrends in certain cases, but we cannot conclude that any clear trend exists in classifying GRBs. These microtrends could point towards a deeper understanding of the physical meaning of these classes (e.g. a different environment of the same progenitor or different progenitors). However, a larger sample and different algorithms could achieve such goals. Thus, this methodology can lead to deeper insights in the future.

Funder

National Astronomical Observatory of Japan

National Science Centre

Ministry of Science and Higher Education

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Classification of Fermi gamma-ray bursts based on machine learning;Monthly Notices of the Royal Astronomical Society;2024-06-27

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