[1912.03392] Iterative removal of redshift space distortions from galaxy clustering

Authors:  Yuchan Wang (Durham), Baojiu Li (ICC, Durham), Marius Cautun (Leiden)
Abstract:  Observations of galaxy clustering are made in redshift space, which results in distortions to the underlying isotropic distribution of galaxies. These redshift-space distortions (RSD) not only degrade important features of the matter density field, such as the baryonic acoustic oscillation (BAO) peaks, but also pose challenges for the theoretical modelling of observational probes. Here we introduce an iterative nonlinear reconstruction algorithm to remove RSD effects from galaxy clustering measurements, and assess its performance by using mock galaxy catalogues. The new method is found to be able to recover the real-space galaxy correlation function with an accuracy of $\sim1\%$, and restore the quadrupole accurately to $0$, on scales $s\gtrsim20h^{-1}{\rm Mpc}$. It also leads to an improvement in the reconstruction of the initial density field, which could help to accurately locate the BAO peaks. An `internal calibration' scheme is proposed to determine the values of cosmological parameters as a part of the reconstruction process, and possibilities to break parameter degeneracies are discussed. RSD reconstruction can offer a potential way to simultaneously extract the cosmological parameters, initial density field, real-space galaxy positions and large-scale peculiar velocity field (of the real Universe), making it an alternative to standard perturbative approaches in galaxy clustering analysis, bypassing the need for RSD modelling.
[PDF]  [PS]  [BibTex]  [Bookmark]

Discussion related to specific recent arXiv papers
Post Reply
Cosmo Comments
Posts: 22
Joined: September 13 2019
Affiliation: N/A

[1912.03392] Iterative removal of redshift space distortions from galaxy clustering

Post by Cosmo Comments » February 12 2020

This paper was commented on through Cosmo Comments. The following comments can also be viewed as annotations on the paper via Hypothesis.

The paper proposes, implements, and tests a new algorithm to reconstruct the real-space galaxy distribution from the galaxy distribution in redshift space, attempting to revert redshift space distortions (RSD). This can be useful because the real-space galaxy density is easier to model than that in redshift space, potentially allowing more Fourier modes to be used for the analysis. The paper presents a careful study of the algorithm and its performance on mock data. It is well written and I only have some minor comments:
  • From the results shown in the paper, is it possible to see whether analysing the reconstructed real-space galaxy density with a real space model (e.g. for the correlation function or power spectrum) gives more cosmological information than analysing the original redshift-space galaxy density and modeling the RSD? For example, is it possible to estimate how much error bars on $f/b$ or $f\sigma_8$, or $f$ and $b$, or other parameters would improve? One potential worry could be that all one is removing by the algorithm is linear (Kaiser) RSD, because in that case one could as well just model the effect of linear RSD on the redshift-space correlation function or power spectrum and ultimately get the same cosmological parameter constraints. (Maybe the fact that the quadrupole is zero after reconstruction is evidence that the algorithm does more than only removing the linear RSD? I guess my question is, do we know that more than linear RSD is removed.)
  • Section 2.3: It is worth mentioning here that everything is at z=0.5.
  • Is there any reason why the $C_\mathrm{ani}$ parameter has not much effect on the results? This is surprising – as the authors argue it should help to have $C_\mathrm{ani}<1$ because it should suppress the fingers of god.
  • It might be useful to the reader to parse some of the plots showing correlation coefficients in plain text. For example, it might be useful to say somewhere that the reconstruction improves the $k_\mathrm{max}$ up to which $r>90\%$ by a factor of 2 or similar. (One could try to translate this into the number of modes gained, which might give a rough estimate for how much cosmological parameter error bars might shrink in principle.)
  • While the paper already has lots of useful performance measures, I think one missing performance measure is the broadband power spectrum or correlation function of the reconstructed initial conditions – at least I could not find that (maybe I just missed it?). Does that look reasonable? Maybe it would be worth including a plot of that.
  • In the conclusions, it might be useful to also comment on the covariance after reconstruction. One could argue that the reconstruction algorithm makes a complicated transformation of the observed data, which might induce complicated correlations (e.g. how are fiber collisions propagated, or anisotropic mean number density?). Presumably, one could get the covariance with many simulations, but maybe it's tricky to come up with a good likelihood because cosmological parameters enter the summary statistics after reconstruction (e.g. power spectrum) but also the algorithm itself ($b$ and $f$). It might be interesting to discuss or mention some of this.

[These comments were shared with us by a member of the cosmology community. They do not necessarily reflect the opinion of the Cosmo Comments team.]

Post Reply