We present a Bayesian reconstruction method which maps a galaxy distribution from redshiftto real-space inferring the distances of the individual galaxies. The method is based on sampling density fields assuming a lognormal prior with a likelihood modelling non-linear stochastic bias. Coherent redshift-space distortions are corrected in a Gibbs-sampling procedure by moving the galaxies from redshift- to real-space according to the peculiar motions derived from the recovered density field using linear theory. The virialized distortions are corrected by sampling candidate real-space positions along the line of sight, which are compatible with the bulk flow corrected redshift-space position adding a random dispersion term in high-density colla...
none46siAims. Using the VIMOS Public Extragalactic Redshift Survey (VIPERS) we aim to jointly estima...
International audienceWe derive and implement a full Bayesian large scale structure inference method...
This work uses hierarchical logistic Gaussian processes to infer true redshift distributions of samp...
We show how to enhance the redshift accuracy of surveys consisting of tracers with highly uncertain ...
In cosmology and astronomy, measuring the distances to galaxies is an important task. This is done b...
We apply the reconstruction technique to the clustering of galaxies from the Sloan Dig-ital Sky Surv...
We present the first application to density field reconstruction to a galaxy survey to undo the smoo...
International audienceWe present a large-scale Bayesian inference framework to constrain cosmologica...
Context. Measuring environment for large numbers of galaxies in the distant Universe is an open prob...
We outline how redshift-space distortions (RSD) can be measured from the angular correla-tion functi...
International audienceThe low-statistical errors on cosmological parameters promised by future galax...
Context. Measuring environment for large numbers of galaxies in the distant Universe is an open prob...
Accurately characterizing the redshift distributions of galaxies is essential for analysing deep pho...
Galaxy redshift surveys provide a distorted picture of the universe due to the non-Hubble component ...
We present a self-consistent Bayesian formalism to sample the primordial density fields compatible w...
none46siAims. Using the VIMOS Public Extragalactic Redshift Survey (VIPERS) we aim to jointly estima...
International audienceWe derive and implement a full Bayesian large scale structure inference method...
This work uses hierarchical logistic Gaussian processes to infer true redshift distributions of samp...
We show how to enhance the redshift accuracy of surveys consisting of tracers with highly uncertain ...
In cosmology and astronomy, measuring the distances to galaxies is an important task. This is done b...
We apply the reconstruction technique to the clustering of galaxies from the Sloan Dig-ital Sky Surv...
We present the first application to density field reconstruction to a galaxy survey to undo the smoo...
International audienceWe present a large-scale Bayesian inference framework to constrain cosmologica...
Context. Measuring environment for large numbers of galaxies in the distant Universe is an open prob...
We outline how redshift-space distortions (RSD) can be measured from the angular correla-tion functi...
International audienceThe low-statistical errors on cosmological parameters promised by future galax...
Context. Measuring environment for large numbers of galaxies in the distant Universe is an open prob...
Accurately characterizing the redshift distributions of galaxies is essential for analysing deep pho...
Galaxy redshift surveys provide a distorted picture of the universe due to the non-Hubble component ...
We present a self-consistent Bayesian formalism to sample the primordial density fields compatible w...
none46siAims. Using the VIMOS Public Extragalactic Redshift Survey (VIPERS) we aim to jointly estima...
International audienceWe derive and implement a full Bayesian large scale structure inference method...
This work uses hierarchical logistic Gaussian processes to infer true redshift distributions of samp...