From Cosmicflows distance moduli to unbiased distances and peculiar velocities
Yehuda Hoffman, Adi Nusser, Aurelien Valade, Noam I. Libeskind, R., Brent Tully

TL;DR
This paper introduces a bias correction method for galaxy distance and velocity data that removes lognormal bias, enabling more accurate large-scale structure reconstructions and Hubble constant estimation.
Contribution
The paper presents the Bias Gaussianization correction (BGc) algorithm, a novel method to correct lognormal bias in galaxy distance and velocity data, validated with mock data and applied to real surveys.
Findings
BGc effectively removes lognormal bias in mock data.
Application to CF3 data yields H0 = 75.8 ± 1.1 km/s/Mpc.
Residual bias in H0 is dominated by cosmic variance.
Abstract
Surveys of galaxy distances and radial peculiar velocities can be used to reconstruct the large scale structure. Other than systematic errors in the zero-point calibration of the galaxy distances the main source of uncertainties of such data are errors on the distance moduli, assumed here to be Gaussian and thus turn into lognormal errors on distances and velocities. Naively treated, it leads to spurious nearby outflow and strong infall at larger distances. The lognormal bias is corrected here and tested against mock data extracted from a CDM simulation, designed to statistically follow the grouped Cosmicflows-3 (CF3) data. Considering a subsample of data points, all of which have the same true distances or same redshifts, the lognormal bias arises because the means of the distributions of observed distances and velocities are skewed off the means of the true distances and…
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