Multi-Model Framework for Reconstructing Gamma-Ray Burst Light Curves
A. Kaushal, A. Manchanda, M. G. Dainotti, K. Gupta, Z. Nogala, A. Madhan, S. Naqi, Ritik Kumar, V. Oad, N. Indoriya, Krishnanjan Sil, D. H. Hartmann, M. Bogdan, A. Pollo, JX. Prochaska, N. Fraija

TL;DR
This paper introduces a multi-model machine learning framework to reconstruct Gamma-ray Burst light curves, significantly reducing uncertainties and improving parameter estimation for cosmological applications.
Contribution
It expands the application of machine learning models to GRB light curve reconstruction, outperforming traditional methods in uncertainty reduction and parameter recovery.
Findings
Quartic Smoothing Spline reduces uncertainty by over 43% in key parameters.
CNN-BiLSTM model achieves the lowest outlier rate for slope parameter.
Models enhance GRB analysis for cosmology and standard candle use.
Abstract
Mitigating data gaps in Gamma-ray bursts (GRBs) light curves (LCs) is crucial for cosmological research, enhancing the precision of parameters, assuming perfect satellite conditions for complete LC coverage with no gaps. This analysis improves the applicability of the two-dimensional Dainotti relation, which connects the rest-frame end time of the plateau emission (Ta) and its luminosity (La), derived from the fluxes (Fa). The study expands on a previous 521 GRB sample by incorporating seven models: Deep Gaussian Process (DGP), Temporal Convolutional Network (TCN), Hybrid CNN with Bidirectional Long Short-Term Memory (CNN-BiLSTM), Bayesian Neural Network (BNN), Polynomial Curve Fitting, Isotonic Regression, and Quartic Smoothing Spline (QSS). Results indicate that QSS significantly reduces uncertainty across parameters: 43.5% for log Ta, 43.2% for log Fa, and 48.3% for alpha,…
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