Мобильная версия

Доступно журналов:

3 288

Доступно статей:

3 891 637

 

Скрыть метаданые

Автор Dan Gao
Автор Yan-Xia Zhang
Автор Yong-Heng Zhao
Дата выпуска 2009-02-01
dc.description We introduced a decision tree method called Random Forests for multi-wavelength data classification. The data were adopted from different databases, including the Sloan Digital Sky Survey (SDSS) Data Release five, USNO, FIRST and ROSAT. We then studied the discrimination of quasars from stars and the classification of quasars, stars and galaxies with the sample from optical and radio bands and with that from optical and X-ray bands. Moreover, feature selection and feature weighting based on Random Forests were investigated. The performances based on different input patterns were compared. The experimental results show that the random forest method is an effective method for astronomical object classification and can be applied to other classification problems faced in astronomy. In addition, Random Forests will show its superiorities due to its own merits, e.g. classification, feature selection, feature weighting as well as outlier detection.
Формат application.pdf
Издатель Institute of Physics Publishing
Копирайт 2009 National Astronomical Observatories of Chinese Academy of Sciences and IOP Publishing Ltd.
Название Random forest algorithm for classification of multiwavelength data
Тип paper
DOI 10.1088/1674-4527/9/2/011
Electronic ISSN 2397-6209
Print ISSN 1674-4527
Журнал Research in Astronomy and Astrophysics
Том 9
Первая страница 220
Последняя страница 226
Выпуск 2

Скрыть метаданые