TL;DR
This paper introduces CLAP, a novel method combining contrastive learning and KNN to improve calibration of deep learning-based galaxy photometric redshift estimates, enhancing reliability for astrophysical applications.
Contribution
The paper presents CLAP, a new approach that effectively calibrates deep learning redshift estimates using contrastive learning and KNN, addressing miscalibration issues in large-scale galaxy surveys.
Findings
CLAP outperforms benchmark calibration methods in experiments.
It maintains high accuracy and computational efficiency.
CLAP reduces miscalibration caused by data correlations.
Abstract
Obtaining well-calibrated photometric redshift probability densities for galaxies without a spectroscopic measurement remains a challenge. Deep learning discriminative models, typically fed with multi-band galaxy images, can produce outputs that mimic probability densities and achieve state-of-the-art accuracy. However, such models may be affected by miscalibration that would result in discrepancies between the model outputs and the actual distributions of true redshifts. Our work develops a novel method called the Contrastive Learning and Adaptive KNN for Photometric Redshift (CLAP) that resolves this issue. It leverages supervised contrastive learning (SCL) and k-nearest neighbours (KNN) to construct and calibrate raw probability density estimates, and implements a refitting procedure to resume end-to-end discriminative models ready to produce final estimates for large-scale imaging…
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Taxonomy
MethodsContrastive Learning
