Augmenting photometric redshift estimates using spectroscopic nearest neighbours
F. Tosone, M.S. Cagliari, L. Guzzo, B.R. Granett, A. Crespi

TL;DR
This paper introduces a deep learning approach using graph neural networks to improve photometric redshift estimates by identifying true neighboring galaxies, significantly reducing errors and outliers in the process.
Contribution
The study presents a novel graph neural network model that probabilistically distinguishes real from chance galaxy neighbors, enhancing photometric redshift accuracy.
Findings
Reduces photometric redshift dispersion by up to 50%.
Decreases outlier fraction from 3% to 0.8%.
High-confidence neighbors provide accurate redshift estimates.
Abstract
As a consequence of galaxy clustering, close galaxies observed on the plane of the sky should be spatially correlated with a probability that is inversely proportional to their angular separation. In principle, this information can be used to improve photometric redshift estimates when spectroscopic redshifts are available for some of the neighbouring objects. Depending on the depth of the survey, however, this angular correlation is reduced by chance projections. In this work, we implement a deep-learning model to distinguish between apparent and real angular neighbours by solving a classification task. We adopted a graph neural network architecture to tie together photometry, spectroscopy, and the spatial information between neighbouring galaxies. We trained and validated the algorithm on the data of the VIPERS galaxy survey, for which photometric redshifts based on spectral energy…
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Taxonomy
TopicsInfrared Target Detection Methodologies · Color Science and Applications
