Probing the large-scale structure with 21cm-galaxy cross-bispectrum: Estimates from simulations and forecasts for upcoming cosmological surveys
Leon Noble, Suman Majumdar, Matteo Viel, Fabio Fontanot, Gabriella De Lucia, Abinash Kumar Shaw, Marta Spinelli, Mohd Kamran, Lizhi Xie, Michaela Hirschmann

TL;DR
This paper analyzes the 21cm-galaxy cross-bispectrum using simulations, forecasting its detectability in upcoming surveys like Euclid and SKA-Mid, highlighting its potential for non-Gaussian cosmological information extraction.
Contribution
It provides the first comprehensive forecast of the 21cm-galaxy cross-bispectrum detectability in future surveys, including analysis of different triangle configurations and observational modes.
Findings
Enhanced detectability of cross-bispectrum compared to auto-bispectrum in interferometric mode.
Forecasted 10σ detection for squeezed triangles with 100 hours of SKA-Mid observations.
Limited detectability at large scales due to cosmic variance.
Abstract
The redshifted 21cm signal from the post-reionization epoch is highly non-Gaussian; thus, higher-order statistics, such as the bispectrum, are required to extract this non-Gaussian information. However, high-signal-to-noise ratio detection of the 21cm auto-bispectrum will be hindered by the presence of residual systematics. Cross-correlating the 21cm signal with galaxies offers a promising path to suppress this uncertainty from residual systematics and potentially increase the signal-to-noise ratio. We present a comprehensive analysis of the HI-galaxy cross-bispectrum using the predictions of theoretical galaxy evolution models defined on large cosmological volumes. Our analysis includes the cross-bispectrum for different triangle sizes and shapes, as well as for different combinations of the HI and galaxy fields. We forecast the detectability of the 21cm-galaxy cross-bispectrum at…
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