METAPHOR: A machine learning based method for the probability density estimation of photometric redshifts
Stefano Cavuoti, Valeria Amaro, Massimo Brescia, Civita Vellucci,, Crescenzo Tortora, Giuseppe Longo

TL;DR
METAPHOR is a machine learning-based method that estimates the probability density functions of photometric redshifts, improving the characterization of uncertainties in galaxy distance measurements.
Contribution
It introduces a modular workflow for photometric redshift estimation that provides reliable PDFs, adaptable to various machine learning models like neural networks, Random Forests, and KNN.
Findings
METAPHOR accurately estimates photo-z PDFs on SDSS data.
It compares favorably with traditional SED fitting methods.
The method is adaptable to different machine learning models.
Abstract
A variety of fundamental astrophysical science topics require the determination of very accurate photometric redshifts (photo-z's). A wide plethora of methods have been developed, based either on template models fitting or on empirical explorations of the photometric parameter space. Machine learning based techniques are not explicitly dependent on the physical priors and able to produce accurate photo-z estimations within the photometric ranges derived from the spectroscopic training set. These estimates, however, are not easy to characterize in terms of a photo-z Probability Density Function (PDF), due to the fact that the analytical relation mapping the photometric parameters onto the redshift space is virtually unknown. We present METAPHOR (Machine-learning Estimation Tool for Accurate PHOtometric Redshifts), a method designed to provide a reliable PDF of the error distribution for…
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