Euclid: The reduced shear approximation and magnification bias for Stage IV cosmic shear experiments
A.C. Deshpande, T.D. Kitching, V.F. Cardone, P.L. Taylor, S. Casas, S., Camera, C. Carbone, M. Kilbinger, V. Pettorino, Z. Sakr, D. Sapone, I., Tutusaus, N. Auricchio, C. Bodendorf, D. Bonino, M. Brescia, V. Capobianco,, J. Carretero, M. Castellano, S. Cavuoti, R. Cledassou

TL;DR
This paper assesses the impact of reduced shear approximation and magnification bias on Euclid's cosmic shear analysis, revealing significant biases in key cosmological parameters and proposing correction methods to improve accuracy.
Contribution
It quantifies the biases caused by systematic effects in Stage IV weak lensing experiments and develops correction formalism, enhancing the reliability of future cosmological inferences.
Findings
Neglecting these effects biases key parameters by over 1 sigma.
The combined correction approach effectively mitigates systematic biases.
Intrinsic alignment effects are sub-dominant after correction.
Abstract
Stage IV weak lensing experiments will offer more than an order of magnitude leap in precision. We must therefore ensure that our analyses remain accurate in this new era. Accordingly, previously ignored systematic effects must be addressed. In this work, we evaluate the impact of the reduced shear approximation and magnification bias, on the information obtained from the angular power spectrum. To first-order, the statistics of reduced shear, a combination of shear and convergence, are taken to be equal to those of shear. However, this approximation can induce a bias in the cosmological parameters that can no longer be neglected. A separate bias arises from the statistics of shear being altered by the preferential selection of galaxies and the dilution of their surface densities, in high-magnification regions. The corrections for these systematic effects take similar forms, allowing…
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