Non-Gaussian inference from non-linear and non-Poisson biased distributed data

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Abstract

We study the statistical inference of the cosmological dark matter density field from non-Gaussian, non-linear and non-Poisson biased distributed tracers. We have implemented a Bayesian posterior sampling computer-code solving this problem and tested it with mock data based on N-body simulations.

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Ata, M., Kitaura, F. S., & Müller, V. (2015). Non-Gaussian inference from non-linear and non-Poisson biased distributed data. Proceedings of the International Astronomical Union, 10, 258–261. https://doi.org/10.1017/S1743921314010904

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