Precise and Rapid Parameter Inference of Kilonova with Conditional Variational Autoencoder
Surojit Saha, Albert K.H Kong

TL;DR
This paper introduces a fast, efficient method using a conditional variational autoencoder for parameter inference of kilonovae, significantly reducing computation time compared to traditional techniques.
Contribution
It presents a novel application of conditional variational autoencoders for rapid kilonova parameter estimation from light curves, improving efficiency over existing methods.
Findings
Parameter inference completed in under 3 hours from training to results.
The method accurately estimates physical parameters from light curves.
It offers a more efficient alternative to likelihood-based inference methods.
Abstract
The coalescence of binary neutron stars in the GW170817 event led to the generation of gravitational waves, accompanied by the electromagnetic counterpart known as a kilonova (KN). Since then, it has been a prime topic of interest, as it has provided much insight into multi-messenger astronomy. Apart from existing methods for parameter estimation, we propose an alternative technique for it, utilizing the strength and flexibility of a conditional variational autoencoder. Publicly available light curves are used as training data, conditioning on the corresponding physical parameters for a chosen model; after training, we carry out rapid parameter inferences. As this approach approximates the likelihood through variational inference, it yields results more efficiently. Through this innovative approach, we demonstrated that the total time, from training to parameter inference, is under…
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