International audienceThe covariance matrix Σ of non-linear clustering statistics that are measured in current and upcoming surveys is of fundamental interest for comparing cosmological theory and data and a crucial ingredient for the likelihood approximations underlying widely used parameter inference and forecasting methods. The extreme number of simulations needed to estimate Σ to sufficient accuracy poses a severe challenge. Approximating Σ using inexpensive but biased surrogates introduces model error with respect to full simulations, especially in the non-linear regime of structure growth. To address this problem, we develop a matrix generalization of Convergence Acceleration by Regression and Pooling (CARPool) to combine a small numb...
The disconnected part of the power spectrum covariance matrix (also known as the "Gaussian" covarian...
International audienceWe present a numerically cheap approximation to super-sample covariance (SSC) ...
29 pags., 15 figs.The disconnected part of the power spectrum covariance matrix (also known as the >...
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...
Predictions of the mean and covariance matrix of summary statistics are critical for confronting cos...
International audiencePredictions of the mean and covariance matrix of summary statistics are critic...
This paper is the first in a set that analyses the covariance matrices of clustering statistics obta...
International audienceThis paper is the first in a set that analyses the covariance matrices of clus...
In many astrophysical settings, covariance matrices of large data sets have to be determined empiric...
11 pages, 11 figures, 2 tablesWe present a fast and robust alternative method to compute covariance ...
We perform a detailed analysis of the covariance matrix of the spherically averaged galaxy power spe...
We present a numerically cheap approximation to super-sample covariance (SSC) of large-scale structu...
Cosmological covariance matrices are fundamental for parameter inference, since they are responsible...
We show how the massive data compression algorithm MOPED can be used to reduce, by orders of magnitu...
The disconnected part of the power spectrum covariance matrix (also known as the "Gaussian" covarian...
International audienceWe present a numerically cheap approximation to super-sample covariance (SSC) ...
29 pags., 15 figs.The disconnected part of the power spectrum covariance matrix (also known as the >...
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...
Predictions of the mean and covariance matrix of summary statistics are critical for confronting cos...
International audiencePredictions of the mean and covariance matrix of summary statistics are critic...
This paper is the first in a set that analyses the covariance matrices of clustering statistics obta...
International audienceThis paper is the first in a set that analyses the covariance matrices of clus...
In many astrophysical settings, covariance matrices of large data sets have to be determined empiric...
11 pages, 11 figures, 2 tablesWe present a fast and robust alternative method to compute covariance ...
We perform a detailed analysis of the covariance matrix of the spherically averaged galaxy power spe...
We present a numerically cheap approximation to super-sample covariance (SSC) of large-scale structu...
Cosmological covariance matrices are fundamental for parameter inference, since they are responsible...
We show how the massive data compression algorithm MOPED can be used to reduce, by orders of magnitu...
The disconnected part of the power spectrum covariance matrix (also known as the "Gaussian" covarian...
International audienceWe present a numerically cheap approximation to super-sample covariance (SSC) ...
29 pags., 15 figs.The disconnected part of the power spectrum covariance matrix (also known as the >...