Extending the SAGA Survey (xSAGA) I: Satellite Radial Profiles as a Function of Host Galaxy Properties
John F. Wu (1), J. E. G. Peek (1, 2), Erik J. Tollerud (1),, Yao-Yuan Mao (3), Ethan O. Nadler (4), Marla Geha (5), Risa H. Wechsler (6),, Nitya Kallivayalil (7), Benjamin J. Weiner (8) ((1) STScI, (2) JHU, (3), Rutgers, (4) Carnegie/USC, (5) Yale, (6) Stanford/KIPAC/SLAC

TL;DR
This paper introduces xSAGA, a new method using CNNs to identify low-redshift satellite galaxies around hosts, revealing dependencies on host properties and matching simulation predictions, thus enabling large-scale satellite studies.
Contribution
The paper develops a CNN-based technique to identify low-z satellites from optical images, significantly expanding satellite galaxy samples for statistical analysis.
Findings
Satellite richness increases with host stellar mass.
Elliptical hosts have more satellites than disky hosts of similar mass.
Satellite radial distribution is largely independent of host properties.
Abstract
We present "Extending the Satellites Around Galactic Analogs Survey" (xSAGA), a method for identifying low- galaxies on the basis of optical imaging, and results on the spatial distributions of xSAGA satellites around host galaxies. Using spectroscopic redshift catalogs from the SAGA Survey as a training data set, we have optimized a convolutional neural network (CNN) to identify galaxies from more distant objects using image cutouts from the DESI Legacy Imaging Surveys. From the sample of CNN-selected low- galaxies, we identify probable satellites located between 36-300 projected kpc from NASA-Sloan Atlas central galaxies in the stellar mass range . We characterize the incompleteness and contamination for CNN-selected samples, and apply corrections in order to estimate the true number of satellites as a function…
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