Optical selection bias and projection effects in stacked galaxy cluster weak lensing
Hao-Yi Wu, Matteo Costanzi, Chun-Hao To, Andr\'es N. Salcedo, David H., Weinberg, James Annis, Sebastian Bocquet, Maria Elidaiana da Silva Pereira,, Joseph DeRose, Johnny Esteves, Arya Farahi, Sebastian Grandis, Eduardo Rozo,, Eli S. Rykoff, Tam\'as N. Varga, Risa H. Wechsler

TL;DR
This paper investigates how optical selection effects and projection biases in galaxy cluster surveys distort weak lensing mass estimates, potentially impacting cosmological constraints.
Contribution
It quantifies the scale-dependent lensing selection bias in optically selected clusters using simulations, emphasizing the role of projection effects and residual correlations.
Findings
Lensing bias can be 20-60% at large scales.
Residual correlations cause positive bias in stacked lensing signals.
Projection effects from line-of-sight galaxies significantly influence bias.
Abstract
Cosmological constraints from current and upcoming galaxy cluster surveys are limited by the accuracy of cluster mass calibration. In particular, optically identified galaxy clusters are prone to selection effects that can bias the weak lensing mass calibration. We investigate the selection bias of the stacked cluster lensing signal associated with optically selected clusters, using clusters identified by the redMaPPer algorithm in the Buzzard simulations as a case study. We find that at a given cluster halo mass, the residuals of redMaPPer richness and weak lensing signal are positively correlated. As a result, for a given richness selection, the stacked lensing signal is biased high compared with what we would expect from the underlying halo mass probability distribution. The cluster lensing selection bias can thus lead to overestimated mean cluster mass and biased cosmology results.…
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