${\rm H{\scriptsize ALO}F{\scriptsize LOW}}$ I: Neural Inference of Halo Mass from Galaxy Photometry and Morphology
ChangHoon Hahn, Connor Bottrell, Khee-Gan Lee

TL;DR
This paper introduces ${\rm H{\scriptsize ALO}F{\scriptsize LOW}}$, a machine learning method that accurately infers dark matter halo masses from galaxy images and properties, surpassing traditional methods in precision.
Contribution
The paper presents a novel simulation-based inference approach using normalizing flows to estimate halo mass from galaxy photometry and morphology, with improved accuracy over existing methods.
Findings
${\rm H{\scriptsize ALO}F{\scriptsize LOW}}$ achieves unbiased halo mass posteriors.
Including morphological data improves mass inference precision.
The method outperforms standard stellar-to-halo mass relation approaches by ~40%."],
Abstract
We present , a new machine learning approach for inferring the mass of host dark matter halos, , from the photometry and morphology of galaxies. uses simulation-based inference with normalizing flows to conduct rigorous Bayesian inference. It is trained on state-of-the-art synthetic galaxy images from Bottrell et al. (2023; arXiv:2308.14793) that are constructed from the IllustrisTNG hydrodynamic simulation and include realistic effects of the Hyper Suprime-Cam Subaru Strategy Program (HSC-SSP) observations. We design to infer and stellar mass, , using band magnitudes, morphological properties quantifying characteristic size, concentration, and asymmetry, total measured satellite luminosity, and number of satellites. We demonstrate…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · CCD and CMOS Imaging Sensors
