Determining the systemic redshift of Lyman-alpha emitters with neural networks and improving the measured large-scale clustering
Siddhartha Gurung-Lopez, Shun Saito, Carlton M. Baugh, Silvia Bonoli,, Cedric G. Lacey, Alvaro A. Orsi

TL;DR
This paper presents a neural network-based method to accurately determine the systemic redshift of Lyman-alpha emitters from their line profiles, reducing clustering measurement distortions in large-scale structure studies.
Contribution
The authors introduce a novel neural network approach trained on theoretical models to improve Ly$eta$ wavelength estimation, enhancing clustering analysis accuracy.
Findings
Significant improvement in Ly$eta$ wavelength accuracy and precision.
Recovery of unperturbed clustering signals down to 1cMpc/h.
Method remains effective even with degraded line profile quality.
Abstract
We explore how to mitigate the clustering distortions in Lyman- emitters (LAEs) samples caused by the miss-identification of the Lyman- (Ly) wavelength in their Ly line profiles. We use the Ly line profiles from our previous LAE theoretical model that includes radiative transfer in the interstellar and intergalactic mediums. We introduce a novel approach to measure the systemic redshift of LAEs from their Ly line using neural networks. In detail, we assume that, for a fraction of the whole LAE population their systemic redshift is determined precisely through other spectral features. We then use this subset to train a neural network that predicts the Ly wavelength given a Ly line profile. We test two different training sets: i) the LAEs are selected homogeneously and ii) only the brightest LAEs are selected. In comparison…
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