Abstract
Abstract
In our study of the correlations between IceCube-detected neutrino events and γ-ray properties of blazars, we recognize the inherent challenges posed by the limited detection of neutrinos. In this paper, we explore few-shot learning to deal with the class imbalance and few-shot issues presented in the incremental version of the 12 yr Fermi-LAT γ-ray source catalog (4FGL_ DR3). Specifically, we train a triplet network to transform the blazars with neutrino emission (NBs) and nonblazar samples into an embedding space where their similarities can be measured. With two-way three-shot learning, 199 out of 3708 blazars without neutrino emission (non-NBs) are considered as the potential blazars emitting neutrinos (NB candidates, or NBCs for short), with a similarity score against NBs exceeding 98%. Moreover, the Kolmogorov–Smirnov test supports our identification of NBCs.
Funder
Foundation for Innovative Research Groups of the National Natural Science Foundation of China
Shanghai Science and Technology Development Foundation
National Science Foundation for Young Scientists of China
Guangdong Major Project of Basic and Applied Basic Research
Scientific and Technological Cooperation Projects
Publisher
American Astronomical Society