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首页> 外文期刊>The Astrophysical journal >ESTIMATING PHOTOMETRIC REDSHIFTS OF QUASARS VIA THE k-NEAREST NEIGHBOR APPROACH BASED ON LARGE SURVEY DATABASES
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ESTIMATING PHOTOMETRIC REDSHIFTS OF QUASARS VIA THE k-NEAREST NEIGHBOR APPROACH BASED ON LARGE SURVEY DATABASES

机译:基于大型调查数据库的k近邻近邻估计法估计光度的红移

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We apply one of the lazy learning methods, the k-nearest neighbor (kNN) algorithm, to estimate the photometric redshifts of quasars based on various data sets from the Sloan Digital Sky Survey (SDSS), the UKIRT Infrared Deep Sky Survey (UKIDSS), and the Wide-field Infrared Survey Explorer (WISE; the SDSS sample, the SDSS-UKIDSS sample, the SDSS-WISE sample, and the SDSS-UKIDSS-WISE sample). The influence of the k value and different input patterns on the performance of kNN is discussed. kNN performs best when k is different with a special input pattern for a special data set. The best result belongs to the SDSS-UKIDSS-WISE sample. The experimental results generally show that the more information from more bands, the better performance of photometric redshift estimation with kNN. The results also demonstrate that kNN using multiband data can effectively solve the catastrophic failure of photometric redshift estimation, which is met by many machine learning methods. Compared with the performance of various other methods of estimating the photometric redshifts of quasars, kNN based on KD-Tree shows superiority, exhibiting the best accuracy.
机译:我们应用一种懒惰的学习方法,即k近邻(kNN)算法,根据斯隆数字天空调查(SDSS),UKIRT红外深空调查(UKIDSS)的各种数据集来估计类星体的光度红移,以及广域红外测量浏览器(WISE; SDSS样本,SDSS-UKIDSS样本,SDSS-WISE样本和SDSS-UKIDSS-WISE样本)。讨论了k值和不同输入模式对kNN性能的影响。当k不同时,对于特殊数据集,kNN表现最佳。最好的结果属于SDSS-UKIDSS-WISE样本。实验结果通常表明,来自更多频带的信息越多,使用kNN进行光度红移估计的性能越好。结果还表明,使用多频带数据的kNN可以有效解决光度红移估计的灾难性故障,这是许多机器学习方法都可以解决的。与估计类星体光度红移的其他各种方法的性能相比,基于KD-Tree的kNN具有优越性,具有最佳的准确性。

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