A Sparse Gaussian Process Framework for Photometric Redshift Estimation
Ibrahim A. Almosallam, Sam N. Lindsay, Matt J. Jarvis, Stephen J. Roberts

TL;DR
This paper introduces a novel sparse Gaussian process framework for photometric redshift estimation, demonstrating significant accuracy improvements over existing machine learning methods on simulated and real SDSS data.
Contribution
The study presents a new sparse Gaussian process approach that directly minimizes redshift bias and outperforms traditional methods like ANNz, especially with limited training data.
Findings
Achieves mean absolute Δz of 0.0026 on simulated data
Attains Δz of 0.0178 on SDSS DR12 data
Outperforms ANNz in sparse data regimes
Abstract
Accurate photometric redshifts are a lynchpin for many future experiments to pin down the cosmological model and for studies of galaxy evolution. In this study, a novel sparse regression framework for photometric redshift estimation is presented. Simulated and real data from SDSS DR12 were used to train and test the proposed models. We show that approaches which include careful data preparation and model design offer a significant improvement in comparison with several competing machine learning algorithms. Standard implementations of most regression algorithms have as the objective the minimization of the sum of squared errors. For redshift inference, however, this induces a bias in the posterior mean of the output distribution, which can be problematic. In this paper we directly target minimizing and address the bias problem…
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