Magnification bias in galaxy surveys with complex sample selection functions
Maximilian von Wietersheim-Kramsta, Benjamin Joachimi, Jan Luca van, den Busch, Catherine Heymans, Hendrik Hildebrandt, Marika Asgari, Tilman, Tr\"oster, Sandra Unruh, Angus H. Wright

TL;DR
This paper develops a method to accurately quantify and model magnification bias in galaxy clustering and lensing measurements for samples with complex selection functions, using mock data calibration.
Contribution
It introduces a calibration procedure for effective luminosity function slopes to account for complex selection functions in magnification bias modeling.
Findings
Effective luminosity slope $oldsymbol{ ext{α}_{ ext{obs}}}$ measured for BOSS samples.
Forecasted magnification bias contribution to galaxy-galaxy lensing signals.
Code implementation publicly available for future survey analyses.
Abstract
Gravitational lensing magnification modifies the observed spatial distribution of galaxies and can severely bias cosmological probes of large-scale structure if not accurately modelled. Standard approaches to modelling this magnification bias may not be applicable in practice as many galaxy samples have complex, often implicit, selection functions. We propose and test a procedure to quantify the magnification bias induced in clustering and galaxy-galaxy lensing (GGL) signals in galaxy samples subject to a selection function beyond a simple flux limit. The method employs realistic mock data to calibrate an effective luminosity function slope, , from observed galaxy counts, which can then be used with the standard formalism. We demonstrate this method for two galaxy samples derived from the Baryon Oscillation Spectroscopic Survey (BOSS) in the redshift ranges $0.2 < z…
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