Predictions of the mean and covariance matrix of summary statistics are critical for confronting cosmological theories with observations, not least for likelihood approximations and parameter inference. The price to pay for accurate estimates is the extreme cost of running $N$-body and hydrodynamics simulations. Approximate solvers, or surrogates, greatly reduce the computational cost but can introduce significant biases, for example in the non-linear regime of cosmic structure growth. We propose "CARPool Bayes", an approach to solve the inference problem for both the means and covariances using a combination of simulations and surrogates. Our framework allows incorporating prior information for the mean and covariance. We derive closed-for...
We use Bayesian model selection techniques to test extensions of the standard flat Λ cold dark matte...
Creating accurate and low-noise covariance matrices represents a formidable challenge in modern-day ...
Bayesian analysis has become an indispensable tool across many different cosmological fields includi...
International audiencePredictions of the mean and covariance matrix of summary statistics are critic...
Data analysis in cosmology requires reliable covariance matrices. Covariance matrices derived from n...
International audienceThe covariance matrix Σ of non-linear clustering statistics that are measured ...
International audienceTo exploit the power of next-generation large-scale structure surveys, ensembl...
International audienceWeak gravitational lensing is one of the few direct methods to map the dark-ma...
Observational astrophysics consists of making inferences about the Universe by comparing data and mo...
Albeit LCDM's fame as the concordance model, there are many interesting mysteries worth exploring, s...
Parameter inference with an estimated covariance matrix systematically loses information due to the ...
Weak gravitational lensing is one of the few direct methods to map the dark-matter distribution on l...
Bayesian model selection is a tool for deciding whether the introduction of a new parameter is warra...
International audienceData analysis from upcoming large galaxy redshift surveys, such as Euclid and ...
Simulation-based inference (SBI) is rapidly establishing itself as a standard machine learning techn...
We use Bayesian model selection techniques to test extensions of the standard flat Λ cold dark matte...
Creating accurate and low-noise covariance matrices represents a formidable challenge in modern-day ...
Bayesian analysis has become an indispensable tool across many different cosmological fields includi...
International audiencePredictions of the mean and covariance matrix of summary statistics are critic...
Data analysis in cosmology requires reliable covariance matrices. Covariance matrices derived from n...
International audienceThe covariance matrix Σ of non-linear clustering statistics that are measured ...
International audienceTo exploit the power of next-generation large-scale structure surveys, ensembl...
International audienceWeak gravitational lensing is one of the few direct methods to map the dark-ma...
Observational astrophysics consists of making inferences about the Universe by comparing data and mo...
Albeit LCDM's fame as the concordance model, there are many interesting mysteries worth exploring, s...
Parameter inference with an estimated covariance matrix systematically loses information due to the ...
Weak gravitational lensing is one of the few direct methods to map the dark-matter distribution on l...
Bayesian model selection is a tool for deciding whether the introduction of a new parameter is warra...
International audienceData analysis from upcoming large galaxy redshift surveys, such as Euclid and ...
Simulation-based inference (SBI) is rapidly establishing itself as a standard machine learning techn...
We use Bayesian model selection techniques to test extensions of the standard flat Λ cold dark matte...
Creating accurate and low-noise covariance matrices represents a formidable challenge in modern-day ...
Bayesian analysis has become an indispensable tool across many different cosmological fields includi...