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GWSkyNet. II. A Refined Machine-learning Pipeline for Real-time Classification of Public Gravitational Wave Alerts

Authors :
Man Leong Chan
Jess McIver
Ashish Mahabal
Cody Messick
Daryl Haggard
Nayyer Raza
Yannick Lecoeuche
Patrick J. Sutton
Becca Ewing
Francesco Di Renzo
Miriam Cabero
Raymond Ng
Michael W. Coughlin
Shaon Ghosh
Patrick Godwin
Source :
The Astrophysical Journal, Vol 972, Iss 1, p 50 (2024)
Publication Year :
2024
Publisher :
IOP Publishing, 2024.

Abstract

Electromagnetic follow-up observations of gravitational wave events offer critical insights and provide significant scientific gain from this new class of astrophysical transients. Accurate identification of gravitational wave candidates and rapid release of sky localization information are crucial for the success of these electromagnetic follow-up observations. However, searches for gravitational wave candidates in real time suffer from a nonnegligible false alarm rate. By leveraging the sky localization information and other metadata associated with gravitational wave candidates, GWSkyNet , a machine-learning classifier developed by Cabero et al., demonstrated promising accuracy for the identification of the origin of event candidates. We improve the performance of the classifier for LIGO–Virgo–KAGRA's (LVK) fourth observing run by reviewing and updating the architecture and features used as inputs by the algorithm. We also retrain and fine-tune the classifier with data from the third observing run. To improve the prospect of electromagnetic follow-up observations, we incorporate GWSkyNet into LVK's low-latency infrastructure as an automatic pipeline for the evaluation of gravitational wave alerts in real time. We test the readiness of the algorithm on an LVK mock data challenge campaign. The results show that by thresholding on the GWSkyNet score, noise masquerading as astrophysical sources can be rejected efficiently and the majority of true astrophysical signals can be correctly identified.

Details

Language :
English
ISSN :
15384357
Volume :
972
Issue :
1
Database :
Directory of Open Access Journals
Journal :
The Astrophysical Journal
Publication Type :
Academic Journal
Accession number :
edsdoj.218e6df6df64c12b3d69c1cdc0f6b74
Document Type :
article
Full Text :
https://doi.org/10.3847/1538-4357/ad496a