Constraints on intrinsic alignment contamination of weak lensing surveys using the MegaZ-LRG sample
B. Joachimi (1,2), R. Mandelbaum (3), F.B. Abdalla (2), S.L. Bridle, (2) ((1) AIfA, Universit\"at Bonn, (2) University College London, (3), Princeton University)

TL;DR
This study measures galaxy intrinsic alignments using the MegaZ-LRG sample, constraining models over redshift and luminosity, and assesses their impact on weak lensing cosmology, reducing uncertainties significantly.
Contribution
First measurement of galaxy position-shape correlations in a photometric redshift sample, constraining intrinsic alignment models across redshift and luminosity.
Findings
Galaxy intrinsic alignments follow a scale and redshift-dependent model.
Additional luminosity dependence improves model fit.
Inclusion of MegaZ-LRG data reduces bias uncertainties in cosmological parameters.
Abstract
Correlations between the intrinsic shapes of galaxies and the large-scale galaxy density field provide an important tool to investigate galaxy intrinsic alignments, which constitute a major astrophysical systematic in cosmological weak lensing (cosmic shear) surveys, but also yield insight into the formation and evolution of galaxies. We measure galaxy position-shape correlations in the MegaZ-LRG sample for more than 800,000 luminous red galaxies, making the first such measurement with a photometric redshift sample. In combination with a re-analysis of several spectroscopic SDSS samples, we constrain an intrinsic alignment model for early-type galaxies over long baselines in redshift (z ~ 0.7) and luminosity (4mag). We develop and test the formalism to incorporate photometric redshift scatter in the modelling. For r_p > 6 Mpc/h, the fits to galaxy position-shape correlation functions…
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