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首页> 外文期刊>The Astrophysical journal >A REFINED QSO SELECTION METHOD USING DIAGNOSTICS TESTS: 663 QSO CANDIDATES IN THE LARGE MAGELLANIC CLOUD
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A REFINED QSO SELECTION METHOD USING DIAGNOSTICS TESTS: 663 QSO CANDIDATES IN THE LARGE MAGELLANIC CLOUD

机译:使用诊断测试的改进的QSO选择方法:大麦哲伦云中的663个QSO候选对象

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We present 663 QSO candidates in the Large Magellanic Cloud (LMC) selected using multiple diagnostics. We started with a set of 2566 QSO candidates selected using the methodology presented in our previous work based on time variability of the MACHO LMC light curves. We then obtained additional information for the candidates by crossmatching them with the Spitzer SAGE, the Two Micron All Sky Survey, the Chandra, the XMM, and an LMC UBVI catalog. Using this information, we specified six diagnostic features based on mid-IR colors, photometric redshifts using spectral energy distribution template fitting, and X-ray luminosities in order to further discriminate high-confidence QSO candidates in the absence of spectra information. We then trained a one-class Support Vector Machine model using the diagnostics features of the confirmed 58 MACHO QSOs. We applied the trained model to the original candidates and finally selected 663 high-confidence QSO candidates. Furthermore, we crossmatched these 663 QSO candidates with the newly confirmed 151 QSOs and 275 non-QSOs in the LMC fields. On the basis of the counterpart analysis, we found that the false positive rate is less than 1%.
机译:我们在使用多种诊断方法选择的大型麦哲伦云(LMC)中提供663个QSO候选对象。我们根据MACHO LMC光曲线的时间可变性,使用先前工作中介绍的方法选择了2566个QSO候选对象。然后,我们通过与Spitzer SAGE,两次微米全天候测量,Chandra,XMM和LMC UBVI目录进行交叉匹配,为候选人获取了更多信息。使用此信息,我们基于中红外颜色,使用光谱能量分布模板拟合的光度红移和X射线发光度指定了六种诊断功能,以便在没有光谱信息的情况下进一步区分高可信度的QSO候选物。然后,我们使用已确认的58个MACHO QSO的诊断功能训练了一类支持向量机模型。我们将训练后的模型应用于原始候选人,最终选择了663位高置信度QSO候选人。此外,我们将这663个QSO候选者与LMC领域中新近确认的151个QSO和275个非QSO进行了交叉匹配。在对应分析的基础上,我们发现误报率小于1%。

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