GWSkyNet-Multi: A Machine Learning Multi-Class Classifier for LIGO-Virgo Public Alerts
Thomas C. Abbott, Eitan Buffaz, Nicholas Vieira, Miriam Cabero, Daryl, Haggard, Ashish Mahabal, Jess McIver

TL;DR
GWSkyNet-Multi is a machine learning model that classifies gravitational wave sources in real-time, distinguishing between binary black holes, neutron star mergers, and detector glitches to aid electromagnetic follow-up efforts.
Contribution
It introduces a multi-class version of GWSkyNet that improves source classification accuracy using a physically-motivated training scheme and hierarchical classifiers.
Findings
Achieved over 93% overall accuracy in classifying sources.
Correctly identified 36 of 40 GW events from LIGO-Virgo O3a.
Demonstrated potential for prioritizing electromagnetic follow-up.
Abstract
Compact object mergers which produce both detectable gravitational waves and electromagnetic emission can provide valuable insights into the neutron star equation of state, the tension in the Hubble constant, and the origin of the r-process elements. However, electromagnetic follow-up of gravitational wave sources is complicated by false positive detections, sources which do not emit light, and the transient nature of the associated electromagnetic emission. GWSkyNet-Multi is a machine learning model that attempts to resolve these issues by providing real-time predictions of the source of a gravitational wave detection. The model uses information from Open Public Alerts (OPAs) released by LIGO-Virgo within minutes of a gravitational wave detection. GWSkyNet was first introduced in Cabero et al. (2020) as a binary classifier and uses the OPA skymaps to classify sources as either…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
