Hierarchical Bayesian inference of photometric redshifts with stellar population synthesis models
Boris Leistedt, Justin Alsing, Hiranya Peiris, Daniel Mortlock, Joel, Leja

TL;DR
This paper introduces a Bayesian hierarchical framework using neural emulators to accurately estimate galaxy redshifts from photometric data, effectively modeling uncertainties and biases in large surveys.
Contribution
The paper presents a novel, computationally feasible hierarchical Bayesian method with neural emulators for photometric redshift estimation using stellar population synthesis models.
Findings
Achieved competitive photometric redshift accuracy with spectroscopic data
Demonstrated the effectiveness of neural emulators in reducing computational load
Identified calibration issues related to emission line luminosities
Abstract
We present a Bayesian hierarchical framework to analyze photometric galaxy survey data with stellar population synthesis (SPS) models. Our method couples robust modeling of spectral energy distributions with a population model and a noise model to characterize the statistical properties of the galaxy populations and real observations, respectively. By self-consistently inferring all model parameters, from high-level hyper-parameters to SPS parameters of individual galaxies, one can separate sources of bias and uncertainty in the data.We demonstrate the strengths and flexibility of this approach by deriving accurate photometric redshifts for a sample of spectroscopically-confirmed galaxies in the COSMOS field, all with 26-band photometry and spectroscopic redshifts. We achieve a performance competitive with publicly-released photometric redshift catalogs based on the same data. Prior to…
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Taxonomy
TopicsEconomics of Agriculture and Food Markets
