Constraining cosmology with weak lensing voids
Christopher T. Davies (Durham, ICC), Marius Cautun (Leiden), Benjamin, Giblin (Edinburgh, ifA), Baojiu Li (Durham, ICC), Joachim Harnois-D\'eraps, (Edinburgh, ifA), and Yan-Chuan Cai (Edinburgh, ifA)

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Abstract
Upcoming surveys such as \LSST{} and \Euclid{} will significantly improve the power of weak lensing as a cosmological probe. To maximise the information that can be extracted from these surveys, it is important to explore novel statistics that complement standard weak lensing statistics such as the shear-shear correlation function and peak counts. In this work, we use a recently proposed weak lensing observable -- weak lensing voids -- to make parameter constraint forecasts for an LSST-like survey. We use the \cosmoslics{} CDM simulation suite to measure void statistics as a function of cosmological parameters. The simulation data is used to train a Gaussian process regression emulator that we use to generate likelihood contours and provide parameter constraints from mock observations. We find that the void abundance is more constraining than the tangential shear profiles, though the…
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