Context. In modern astronomy, machine learning has proved to be efficient and effective in mining big data from the newest telescopes. Aims. In this study, we construct a supervised machine-learning algorithm to classify the objects in the Javalambre Photometric Local Universe Survey first data release (J-PLUS DR1). Methods. The sample set is featured with 12-waveband photometry and labeled with spectrum-based catalogs, including Sloan Digital Sky Survey spectroscopic data, the Large Sky Area Multi-Object Fiber Spectroscopic Telescope, and VERONCAT – the Veron Catalog of Quasars & AGN. The performance of the classifier is presented with the applications of blind test validations based on RAdial Velocity Extension, the Kepler Input Catalog, ...
Context. The two currently largest all-sky photometric datasets, WISE and SuperCOSMOS, have been rec...
Context. The KiDS Strongly lensed QUAsar Detection project (KiDS-SQuaD) is aimed at finding as many ...
We discuss whether modern machine learning methods can be used to characterize the physical nature o...
Context. In modern astronomy, machine learning has proved to be efficient and effective in mining bi...
Context. In modern astronomy, machine learning has proved to be efficient and effective in mining bi...
We develop and demonstrate a classification system that is made up of several support vector machine...
International audienceAstrophysical surveys rely heavily on the classification of sources as stars, ...
This study involves two photometric catalogues, AllWISE and Pan-STARRS Data Release 1, which were cr...
Context. Future astrophysical surveys such as J-PAS will produce very large datasets, the so-called ...
We used 3.1 million spectroscopically labelled sources from the Sloan Digital Sky Survey (SDSS) to t...
This is version 1, you should use the updated version 2 that was accepted for publication: 10.5281/z...
The Javalambre Photometric Local Universe Survey (J-PLUS ) is an ongoing 12-band photometric optical...
The Javalambre-Photometric Local Universe Survey (J-PLUS ) is an ongoing 12-band photometric optical...
We present a catalog of quasars with their corresponding redshifts derived from the photometric Kilo...
We discuss whether modern machine learning methods can be used to characterize the physical nature o...
Context. The two currently largest all-sky photometric datasets, WISE and SuperCOSMOS, have been rec...
Context. The KiDS Strongly lensed QUAsar Detection project (KiDS-SQuaD) is aimed at finding as many ...
We discuss whether modern machine learning methods can be used to characterize the physical nature o...
Context. In modern astronomy, machine learning has proved to be efficient and effective in mining bi...
Context. In modern astronomy, machine learning has proved to be efficient and effective in mining bi...
We develop and demonstrate a classification system that is made up of several support vector machine...
International audienceAstrophysical surveys rely heavily on the classification of sources as stars, ...
This study involves two photometric catalogues, AllWISE and Pan-STARRS Data Release 1, which were cr...
Context. Future astrophysical surveys such as J-PAS will produce very large datasets, the so-called ...
We used 3.1 million spectroscopically labelled sources from the Sloan Digital Sky Survey (SDSS) to t...
This is version 1, you should use the updated version 2 that was accepted for publication: 10.5281/z...
The Javalambre Photometric Local Universe Survey (J-PLUS ) is an ongoing 12-band photometric optical...
The Javalambre-Photometric Local Universe Survey (J-PLUS ) is an ongoing 12-band photometric optical...
We present a catalog of quasars with their corresponding redshifts derived from the photometric Kilo...
We discuss whether modern machine learning methods can be used to characterize the physical nature o...
Context. The two currently largest all-sky photometric datasets, WISE and SuperCOSMOS, have been rec...
Context. The KiDS Strongly lensed QUAsar Detection project (KiDS-SQuaD) is aimed at finding as many ...
We discuss whether modern machine learning methods can be used to characterize the physical nature o...