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Characterising improvements in photometric redshift probability density functions with galaxy morphology

机译:具有Galaxy形态学的光度红移概率密度函数的改进

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In this work, we studied the impact of galaxy morphology on photometric redshift (photo-z) probability density functions (PDFs). By including galaxy morphological parameters like the radius, axis-ratio, surface brightness and the Sersic index in addition to the ugriz broadbands as input parameters, we used the machine learning photo-z algorithm ANNZ2 to train and test on galaxies from the Canada-France-Hawaii Telescope Stripe-82 (CS82) Survey. Metrics like the continuous ranked probability score (CRPS), probability integral transform (PIT), Bayesian odds parameter, and even the width and height of the PDFs were evaluated, and the results were compared when different number of input parameters were used during the training process. We find improvements in the CRPS and width of the PDFs when galaxy morphology has been added to the training, and the improvement is larger especially when the number of broadband magnitudes are lacking.
机译:在这项工作中,我们研究了Galaxy形态对光度红移(Photo-Z)概率密度函数(PDF)的影响。 通过包括半径,轴比,表面亮度和分层索引之外的星系形态参数,除了UGRIZ宽带作为输入参数之外,我们使用机器学习照片Z算法Annz2培训和测试来自加拿大 - 法国的星系 -Hawaii望远镜条纹-82(CS82)调查。 评估持续排名概率得分(CRPS),概率积分变换(PIT),贝叶斯差异参数等度量,甚至是PDF的宽度和高度,并且在训练期间使用了不同数量的输入参数时比较了结果 过程。 当加入训练时,我们发现PDF的CRP和宽度的改进,并且当缺乏宽带幅度的数量时,改善更大。

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