Automatic Machine Learning Framework to Study Morphological Parameters of AGN Host Galaxies within z < 1.4 in the Hyper Supreme-Cam Wide Survey

Chuan Tian, 川 田, C. Megan Urry, Aritra Ghosh, Daisuke Nagai, Tonima T. Ananna, Meredith C. Powell, Connor Auge, Aayush Mishra, David B. Sanders, Nico Cappelluti and Kevin Schawinski
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Abstract

We present a composite machine learning framework to estimate posterior probability distributions of bulge-to-total light ratio, half-light radius, and flux for active galactic nucleus (AGN) host galaxies within z < 1.4 and m < 23 in the Hyper Supreme-Cam (HSC) Wide survey. We divide the data into five redshift bins: low (0 < z < 0.25), mid (0.25 < z < 0.5), high (0.5 < z < 0.9), extra (0.9 < z < 1.1), and extreme (1.1 < z < 1.4), and train our models independently in each bin. We use PSFGAN to decompose the AGN point-source light from its host galaxy, and invoke the Galaxy Morphology Posterior Estimation Network (GaMPEN) to estimate morphological parameters of the recovered host galaxy. We first trained our models on simulated data, and then fine-tuned our algorithm via transfer learning using labeled real data. To create training labels for transfer learning, we used GALFIT to fit ∼20,000 real HSC galaxies in each redshift bin. We comprehensively examined that the predicted values from our final models agree well with the GALFIT values for the vast majority of cases. Our PSFGAN + GaMPEN framework runs at least three orders of magnitude faster than traditional light-profile fitting methods, and can be easily retrained for other morphological parameters or on other data sets with diverse ranges of resolutions, seeing conditions, and signal-to-noise ratios, making it an ideal tool for analyzing AGN host galaxies from large surveys coming soon from the Rubin-LSST, Euclid, and Roman telescopes.
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利用自动机器学习框架研究超超级宽巡天中z < 1.4范围内AGN宿主星系的形态参数
我们提出了一个复合机器学习框架来估计活动星系核(AGN)宿主星系在z < 1.4和m < 23范围内的膨胀-总光比、半光半径和通量的后验概率分布。我们将数据分为五个红移箱:低(0 < z < 0.25),中(0.25 < z < 0.5),高(0.5 < z < 0.9),额外(0.9 < z < 1.1)和极端(1.1 < z < 1.4),并在每个箱中独立训练我们的模型。我们利用PSFGAN分解来自宿主星系的AGN点光源光,并调用星系形态后验估计网络(GaMPEN)来估计恢复的宿主星系的形态参数。我们首先在模拟数据上训练我们的模型,然后通过使用标记的真实数据进行迁移学习来微调我们的算法。为了创建迁移学习的训练标签,我们使用GALFIT在每个红移箱中拟合了~ 20,000个真实的HSC星系。我们全面检查了我们最终模型的预测值与绝大多数情况下的GALFIT值非常吻合。我们的PSFGAN + GaMPEN框架比传统的光廓拟合方法运行速度至少快三个数量级,并且可以很容易地重新训练其他形态参数或具有不同分辨率范围的其他数据集,观察条件和信噪比,使其成为分析来自鲁宾- lsst,欧几里得和罗马望远镜即将进行的大型调查的AGN宿主星系的理想工具。
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