Using a Neural Network Classifier to Select Galaxies with the Most Accurate Photometric Redshifts
Adam Broussard, Eric Gawiser

TL;DR
This paper introduces a neural network classifier that significantly improves the selection of galaxies with accurate photometric redshifts, enhancing cosmological analysis capabilities for large surveys like LSST.
Contribution
The study demonstrates how a neural network classifier can effectively select galaxies with precise redshifts, outperforming traditional uncertainty-based methods, and is adaptable for large-scale surveys.
Findings
35% reduction in outlier rate for selected galaxy samples
23% improvement in photo-z scatter ($\sigma_z$)
Enables more tomographic bins, increasing signal-to-noise ratio
Abstract
The Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST) will produce several billion photometric redshifts (photo-'s), enabling cosmological analyses to select a subset of galaxies with the most accurate photo-. We perform initial redshift fits on Subaru Strategic Program galaxies with deep photometry using Trees for Photo-Z (TPZ) before applying a custom neural network classifier (NNC) tuned to select galaxies with . We consider four cases of training and test sets ranging from an idealized case to using data augmentation to increase the representation of dim galaxies in the training set. Selections made using the NNC yield significant further improvements in outlier fraction and photo- scatter () over those made with typical photo- uncertainties. As an example, when selecting the…
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