GREAT3 results I: systematic errors in shear estimation and the impact of real galaxy morphology
Rachel Mandelbaum, Barnaby Rowe, Robert Armstrong, Deborah Bard,, Emmanuel Bertin, James Bosch, Dominique Boutigny, Frederic Courbin, William, A. Dawson, Annamaria Donnarumma, Ian Fenech Conti, Raphael Gavazzi, Marc, Gentile, Mandeep S. S. Gill, David W. Hogg, Eric M. Huff

TL;DR
This paper reports on the GREAT3 challenge, evaluating shear estimation methods for weak gravitational lensing, highlighting the impact of realistic galaxy morphology and other factors on systematic errors relevant for dark energy surveys.
Contribution
It provides the first quantification of how realistic galaxy morphology affects shear calibration biases in weak lensing analyses.
Findings
Realistic galaxy morphology changes shear calibration biases by about 1%.
Quantified effects of galaxy size, Sersic index, and PSF properties on shear estimation.
Many methods now meet systematic error targets for future dark energy surveys.
Abstract
We present first results from the third GRavitational lEnsing Accuracy Testing (GREAT3) challenge, the third in a sequence of challenges for testing methods of inferring weak gravitational lensing shear distortions from simulated galaxy images. GREAT3 was divided into experiments to test three specific questions, and included simulated space- and ground-based data with constant or cosmologically-varying shear fields. The simplest (control) experiment included parametric galaxies with a realistic distribution of signal-to-noise, size, and ellipticity, and a complex point spread function (PSF). The other experiments tested the additional impact of realistic galaxy morphology, multiple exposure imaging, and the uncertainty about a spatially-varying PSF; the last two questions will be explored in Paper II. The 24 participating teams competed to estimate lensing shears to within systematic…
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