Stellar Parameter Determination from Photometry using Invertible Neural Networks
Victor F. Ksoll, Lynton Ardizzone, Ralf Klessen, Ullrich Koethe, Elena, Sabbi, Massimo Robberto, Dimitrios Gouliermis, Carsten Rother, Peter Zeidler, and Mario Gennaro

TL;DR
This paper introduces a novel deep learning method using invertible neural networks to accurately infer stellar parameters from photometry, addressing degeneracies caused by observational and model uncertainties.
Contribution
The paper presents a new conditional invertible neural network approach for stellar parameter estimation from photometry, capable of providing full posterior distributions and handling complex degeneracies.
Findings
Excellent performance on synthetic data, especially for stellar age.
Reasonable results on real cluster data, confirming previous findings.
Discrepancies between models and observations affect age estimates for old stars.
Abstract
Photometric surveys with the Hubble Space Telescope (HST) allow us to study stellar populations with high resolution and deep coverage, with estimates of the physical parameters of the constituent stars being typically obtained by comparing the survey data with adequate stellar evolutionary models. This is a highly non-trivial task due to effects such as differential extinction, photometric errors, low filter coverage, or uncertainties in the stellar evolution calculations. These introduce degeneracies that are difficult to detect and break. To improve this situation, we introduce a novel deep learning approach, called conditional invertible neural network (cINN), to solve the inverse problem of predicting physical parameters from photometry on an individual star basis and to obtain the full posterior distributions. We build a carefully curated synthetic training data set derived from…
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