Morphological Parameters and Associated Uncertainties for 8 Million Galaxies in the Hyper Suprime-Cam Wide Survey
Aritra Ghosh, C. Megan Urry, Aayush Mishra, Laurence, Perreault-Levasseur, Priyamvada Natarajan, David B. Sanders, Daisuke Nagai,, Chuan Tian, Nico Cappelluti, Jeyhan S. Kartaltepe, Meredith C. Powell, Amrit, Rau, Ezequiel Treister

TL;DR
This paper introduces GaMPEN, a machine learning framework that accurately estimates galaxy morphological parameters and uncertainties for 8 million galaxies, outperforming traditional methods and aiding future large-scale surveys.
Contribution
GaMPEN is a novel machine learning approach that provides well-calibrated Bayesian posteriors for galaxy morphology, trained with transfer learning on simulations and real data.
Findings
GaMPEN achieves <5% deviation in posterior calibration.
It outperforms light profile fitting in uncertainty estimation.
The catalog significantly improves size, depth, and uncertainty quantification.
Abstract
We use the Galaxy Morphology Posterior Estimation Network (GaMPEN) to estimate morphological parameters and associated uncertainties for million galaxies in the Hyper Suprime-Cam (HSC) Wide survey with and . GaMPEN is a machine learning framework that estimates Bayesian posteriors for a galaxy's bulge-to-total light ratio (), effective radius (), and flux (). By first training on simulations of galaxies and then applying transfer learning using real data, we trained GaMPEN with of our dataset. This two-step process will be critical for applying machine learning algorithms to future large imaging surveys, such as the Rubin-Legacy Survey of Space and Time (LSST), the Nancy Grace Roman Space Telescope (NGRST), and Euclid. By comparing our results to those obtained using light-profile fitting, we demonstrate that GaMPEN's predicted…
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Taxonomy
TopicsRemote Sensing in Agriculture · Advanced Statistical Methods and Models · Spectroscopy and Chemometric Analyses
