From ANN to BNN: Inferring Reionization Parameters using Uncertainty-aware Emulators of 21-cm Summaries
Yashrajsinh Mahida, Sanjay Kumar Yadav, Suman Majumdar, Leon Noble, Chandra Shekhar Murmu, Saswata Dasgupta, Sohini Dutta, Himanshu Tiwari, Abinash Kumar Shaw

TL;DR
This paper introduces Bayesian neural network emulators for 21-cm signal statistics to accurately propagate uncertainty in Bayesian inference of reionization parameters, improving constraints over traditional ANN methods.
Contribution
The paper develops BNN emulators that provide uncertainty estimates for 21-cm summaries, enhancing Bayesian inference of EoR parameters compared to existing ANN approaches.
Findings
BNN emulators effectively capture prediction uncertainty.
Using BNNs yields tighter constraints on EoR parameters.
Bispectrum provides better parameter constraints than power spectrum.
Abstract
Inferring astrophysical parameters from radio interferometric observations of the redshifted 21-cm signal from the Epoch of Reionization (EoR) is a challenging yet crucial task. The 21-cm signal from EoR is expected to be highly non-Gaussian; therefore, we need to use higher-order statistics, e.g., bispectrum. Moreover, the forward modeling of the signal and its statistics for a varying set of model parameters requires rerunning the simulations many times, which is computationally very expensive. To overcome this challenge, many artificial neural network (ANN) based emulators have been introduced, which produce the 21-cm summaries in a fraction of the time. However, ANN emulators have a drawback: they can only produce point-value predictions; thus, they fail to capture the uncertainty associated with their predictions. Therefore, when such emulators are used in the Bayesian inference…
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