GRB Optical and X-ray Plateau Properties Classifier Using Unsupervised Machine Learning
Shubham Bhardwaj, Maria G. Dainotti, Sachin Venkatesh, Aditya, Narendra, Anish Kalsi, Enrico Rinaldi, and Agnieszka Pollo

TL;DR
This paper applies unsupervised machine learning to classify Gamma-ray bursts based on optical and X-ray plateau properties, exploring potential subclasses and micro-trends, but finds no definitive classification yet.
Contribution
It introduces a novel machine-learning approach using Gaussian Mixture Models to classify GRBs based on multi-wavelength observational data.
Findings
Identified micro-trends in GRB subclasses
No clear classification trend established
Method shows potential for future insights
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 sub-classes, 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…
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Taxonomy
TopicsGamma-ray bursts and supernovae
