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

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

arXiv.org Artificial Intelligence 

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 Wide survey. We divide the data into five redshift bins: low ($0