Hierarchical modeling and statistical calibration for photometric redshifts
Boris Leistedt, David W. Hogg, Risa H. Wechsler, Joe DeRose

TL;DR
This paper introduces a hierarchical modeling approach that combines template fitting and machine learning to produce accurate, interpretable, and generalizable photometric redshift distributions, improving upon existing methods.
Contribution
It presents a novel hierarchical model that integrates template fitting with flexible corrections, enabling global calibration and interpretability without requiring complete training data.
Findings
More accurate redshift posterior distributions
Insights into residual photometric and SED systematics
Model predicts well for future data
Abstract
The cosmological exploitation of modern photometric galaxy surveys requires both accurate (unbiased) and precise (narrow) redshift probability distributions derived from broadband photometry. Existing methodologies do not meet those requirements. Standard template fitting delivers interpretable models and errors, but lacks flexibility to learn inaccuracies in the observed photometry or the spectral templates. Machine learning addresses those issues, but requires representative training data, and the resulting models and uncertainties cannot be interpreted in the context of a physical model or outside of the training data. We present a hierarchical modeling approach simultaneously addressing the issues of flexibility, interpretability, and generalization. It combines template fitting with flexible (machine learning-like) models to correct the spectral templates, model their redshift…
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