From Redshift to Real Space: Combining Linear Theory With Neural Networks
Edoardo Maragliano, Punyakoti Ganeshaiah Veena, Giulia Degni, Enzo Franco Branchini

TL;DR
This paper introduces a hybrid method combining linear theory and neural networks to effectively correct redshift space distortions in galaxy surveys, improving the accuracy of large-scale structure reconstructions and cosmological analyses.
Contribution
The novel approach integrates linear theory with neural networks to mitigate redshift distortions, outperforming individual methods and enhancing clustering statistics in simulated data.
Findings
50% improvement over linear theory alone
12% better accuracy than neural networks alone
Enhanced correlation with true real-space fields
Abstract
Spectroscopic redshift surveys are key tools to trace the large-scale structure (LSS) of the Universe and test the CDM model. However, using redshifts as distance proxies introduces distortions in the 3D galaxy distribution. If uncorrected, these distortions lead to systematic errors in LSS analyses and cosmological parameter estimation. We present a new method that combines linear theory (LT) and a neural network (NN) to mitigate redshift space distortions (RSDs). The hybrid LT+NN approach is trained and validated on dark matter halo fields from z = 1 snapshots of the Quijote N-body simulations. LT corrects large-scale distortions in the linear regime, while the NN learns quasi-linear and small-scale features. The LT correction is applied first, then the NN is trained on the resulting fields to improve accuracy across scales. The method uses a Mean Squared Error (MSE) loss and…
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Taxonomy
TopicsRemote Sensing in Agriculture · Galaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research
