J-PLUS: Support Vector Regression to Measure Stellar Parameters
Cunshi Wang, Yu Bai, Haibo Yuan, Jifeng Liu, J.A., Fern\'andez-Ontiveros, Paula R. T. Coelho, F.Jim\'enez-Esteban, Carlos, Andr\'es Galarza, R. E. Angulo, A. J. Cenarro, D. Crist\'obal-Hornillos, R., A. Dupke, A. Ederoclite, C. Hern\'andez-Monteagudo, C. L\'opez-Sanjuan, A.

TL;DR
This paper develops a Support Vector Regression method using J-PLUS photometry to efficiently estimate stellar parameters, achieving high accuracy and providing a large catalog of stellar data for astrophysical research.
Contribution
The study introduces a multi-model SVR approach that accounts for uncertainties, improving the estimation of stellar parameters from photometric data compared to existing methods.
Findings
Catalog of 2.49 million stars with stellar parameters.
Root Mean Square Error of 160K for temperature.
Comparison shows advantages over other machine-learning methods.
Abstract
Context. Stellar parameters are among the most important characteristics in studies of stars, which are based on atmosphere models in traditional methods. However, time cost and brightness limits restrain the efficiency of spectral observations. The J-PLUS is an observational campaign that aims to obtain photometry in 12 bands. Owing to its characteristics, J-PLUS data have become a valuable resource for studies of stars. Machine learning provides powerful tools to efficiently analyse large data sets, such as the one from J-PLUS, and enable us to expand the research domain to stellar parameters. Aims. The main goal of this study is to construct a SVR algorithm to estimate stellar parameters of the stars in the first data release of the J-PLUS observational campaign. Methods. The training data for the parameters regressions is featured with 12-waveband photometry from J-PLUS, and is…
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