摘要: The ESA's X-ray Multi-Mirror Mission (XMM-Newton) created a new, high quality
version of the XMM-Newton serendipitous source catalogue, 4XMM-DR9, which
provides a wealth of information for observed sources. The 4XMM-DR9 catalogue
is correlated with the Sloan Digital Sky Survey (SDSS) DR12 photometric
database and the ALLWISE database, then we get the X-ray sources with
information from X-ray, optical and/or infrared bands, and obtain the XMM-WISE
sample, the XMM-SDSS sample and the XMM-WISE-SDSS sample. Based on the large
spectroscopic surveys of SDSS and the Large Sky Area Multi-object Fiber
Spectroscopic Telescope (LAMOST), we cross-match the XMM-WISE-SDSS sample with
those sources of known spectral classes, and obtain the known samples of stars,
galaxies and quasars. The distribution of stars, galaxies and quasars as well
as all spectral classes of stars in 2-d parameter spaces is presented. Various
machine learning methods are applied on different samples from different bands.
The better classified results are retained. For the sample from X-ray band,
rotation forest classifier performs the best. For the sample from X-ray and
infrared bands, a random forest algorithm outperforms all other methods. For
the samples from X-ray, optical and/or infrared bands, LogitBoost classifier
shows its superiority. Thus, all X-ray sources in the 4XMM-DR9 catalogue with
different input patterns are classified by their respective models which are
created by these best methods. Their membership and membership probabilities to
individual X-ray sources are assigned. The classified result will be of great
value for the further research of X-ray sources in greater detail.