Making the most of pure parallels: Machine learning augmented photometric redshifts for sparse JWST filter sets
Kenneth J. Duncan

TL;DR
This paper demonstrates that simple machine learning methods, especially nearest-neighbour estimates, significantly improve photometric redshift accuracy for JWST datasets with limited filters, outperforming traditional template fitting approaches.
Contribution
The study introduces ML-based photometric redshift techniques, particularly nearest-neighbour and hybrid methods, that enhance accuracy and reliability for sparse JWST filter sets, with minimal additional computational cost.
Findings
Nearest-neighbour estimates outperform template fitting up to z~8.
Hybrid methods further improve accuracy and outlier rejection.
Achieves robust photo-z with low scatter and outlier fractions using only 6 NIRCam bands.
Abstract
Photometric redshifts (photo-s) are an essential tool for galaxy evolution science with JWST. However, for deep surveys with more limited filter sets (i.e. ) such as large pure parallel surveys, the most commonly used template-fitting based photo- approaches can yield highly confident but spurious results for high- populations of interest. The utility and legacy value of these datasets could therefore be negatively impacted. To address this challenge, we present an application of machine learning (ML) based photo- techniques to deep JWST photometric datasets. We employ two different ML algorithms, using Gaussian processes and nearest-neighbour estimates, alongside a more standard template fitting approach. We show that simple nearest-neighbour based estimates can provide more accurate photo-s than template fitting out to , as well as…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · Stellar, planetary, and galactic studies
