We present a method to transform multivariate unimodal non-Gaussian posterior probability densities into approximately Gaussian ones via non-linear mappings, such as Box–Cox transformations and generalizations thereof. This permits an analytical reconstruction of the posterior from a point sample, like a Markov chain, and simplifies the subsequent joint analysis with other experiments. This way, a multivariate posterior density can be reported efficiently, by compressing the information contained in Markov Chain Monte Carlo samples. Further, the model evidence integral (i.e. the marginal likelihood) can be computed analytically. This method is analogous to the search for normal parameters in the cosmic microwave background, but is more gene...
Accurate analyses of present and next-generation cosmological galaxy surveys require new ways to han...
International audienceAccurate analyses of present and next-generation cosmological galaxy surveys r...
We present the marginal unbiased score expansion (MUSE) method, an algorithm for generic high-dimens...
Modern observational cosmology relies on statistical inference, which models measurable quantities (...
Modern cosmological analyses constrain physical parameters using Markov Chain Monte Carlo (MCMC) or ...
Bayesian analysis has become an indispensable tool across many different cosmological fields includi...
International audienceHigh-dimensional probability density estimation for inference suffers from the...
Aims. We outline the Bayesian approach to inferring fNL, the level of non-Gaussianities of local ty...
We discuss how to efficiently and reliably estimate the level of agreement and disagreement on param...
Context. Weak lensing mass-mapping is a useful tool for accessing the full distribution of dark matt...
Weak lensing mass-mapping is a useful tool to access the full distribution of dark matter on the sky...
The properties of black hole and neutron-star binaries are extracted from gravitational waves (GW) s...
We introduce an exact Bayesian approach to search for non-Gaussianity of local type in Cosmic Microw...
This article focuses on a challenging class of inverse problems that is often encountered in applica...
We present a strategy for a statistically rigorous Bayesian approach to the problem of determining c...
Accurate analyses of present and next-generation cosmological galaxy surveys require new ways to han...
International audienceAccurate analyses of present and next-generation cosmological galaxy surveys r...
We present the marginal unbiased score expansion (MUSE) method, an algorithm for generic high-dimens...
Modern observational cosmology relies on statistical inference, which models measurable quantities (...
Modern cosmological analyses constrain physical parameters using Markov Chain Monte Carlo (MCMC) or ...
Bayesian analysis has become an indispensable tool across many different cosmological fields includi...
International audienceHigh-dimensional probability density estimation for inference suffers from the...
Aims. We outline the Bayesian approach to inferring fNL, the level of non-Gaussianities of local ty...
We discuss how to efficiently and reliably estimate the level of agreement and disagreement on param...
Context. Weak lensing mass-mapping is a useful tool for accessing the full distribution of dark matt...
Weak lensing mass-mapping is a useful tool to access the full distribution of dark matter on the sky...
The properties of black hole and neutron-star binaries are extracted from gravitational waves (GW) s...
We introduce an exact Bayesian approach to search for non-Gaussianity of local type in Cosmic Microw...
This article focuses on a challenging class of inverse problems that is often encountered in applica...
We present a strategy for a statistically rigorous Bayesian approach to the problem of determining c...
Accurate analyses of present and next-generation cosmological galaxy surveys require new ways to han...
International audienceAccurate analyses of present and next-generation cosmological galaxy surveys r...
We present the marginal unbiased score expansion (MUSE) method, an algorithm for generic high-dimens...