Self-Supervised Learning Applied to Variable Star Semi-supervised Classification using LSTM and GRU Networks

Merino R.; Jara, P; Peralta, B; Nicolis, O; Lobel, H; Caro, L

Keywords: Self-supervised learning, Variable star, Semisupervised classification

Abstract

Recognizing variable stars is a task of interest in the astronomy community. Currently, this task has taken advantage of deep learning algorithms. However, these algorithms require a large amount of data to achieve high levels of precision. In this work, self-supervised learning is proposed to improve the classification of variable stars considering a reduced amount of data using recurrent networks. The experiments in Gaia dataset show that the proposed approach allows to improve performance, when compared with traditional initialization schemes, up to 7% and 13% in real databases in semi-supervised learning scenarios. In future work, we propose considering experiments with other variable star databases. © 2024 IEEE.

Más información

Título según WOS: Self-Supervised Learning Applied to Variable Star Semi-supervised Classification using LSTM and GRU Networks
Título según SCOPUS: Self-Supervised Learning Applied to Variable Star Semi-Supervised Classification Using LSTM and GRU Networks
Editorial: Institute of Electrical and Electronics Engineers Inc.
Fecha de publicación: 2024
Idioma: English
DOI:

10.1109/CLEI64178.2024.10700176

Notas: ISI, SCOPUS