International audienceTo exploit the power of next-generation large-scale structure surveys, ensembles of numerical simulations are necessary to give accurate theoretical predictions of the statistics of observables. High-fidelity simulations come at a towering computational cost. Therefore, approximate but fast simulations, surrogates, are widely used to gain speed at the price of introducing model error. We propose a general method that exploits the correlation between simulations and surrogates to compute fast, reduced-variance statistics of large-scale structure observables without model error at the cost of only a few simulations. We call this approach Convergence Acceleration by Regression and Pooling (CARPool). In numerical experimen...
We present a continuation of an analysis that aims to quantify resolution of $N$-body simulations by...
Dark Energy Spectroscopic Instrument (DESI) will construct a large and precise three-dimensional map...
International audienceMany statistical models in cosmology can be simulated forwards but have intrac...
International audienceTo exploit the power of next-generation large-scale structure surveys, ensembl...
International audienceThe covariance matrix Σ of non-linear clustering statistics that are measured ...
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...
We present an algorithm for quickly generating multiple realizations of N-body simulations to be use...
We present and test a method that dramatically reduces variance arising from the sparse sampling of ...
International audienceDark Energy Spectroscopic Instrument (DESI) will construct a large and precise...
International audienceWe present a numerically cheap approximation to super-sample covariance (SSC) ...
In this thesis I present a scalable approach to distribution-to-distribution regression on large, mu...
We present a continuation of an analysis that aims to quantify resolution of $N$-body simulations by...
We present a numerically cheap approximation to super-sample covariance (SSC) of large-scale structu...
The standard approach to inference from cosmic large-scale structure data employs summary statistics...
We present a continuation of an analysis that aims to quantify resolution of $N$-body simulations by...
Dark Energy Spectroscopic Instrument (DESI) will construct a large and precise three-dimensional map...
International audienceMany statistical models in cosmology can be simulated forwards but have intrac...
International audienceTo exploit the power of next-generation large-scale structure surveys, ensembl...
International audienceThe covariance matrix Σ of non-linear clustering statistics that are measured ...
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...
We present an algorithm for quickly generating multiple realizations of N-body simulations to be use...
We present and test a method that dramatically reduces variance arising from the sparse sampling of ...
International audienceDark Energy Spectroscopic Instrument (DESI) will construct a large and precise...
International audienceWe present a numerically cheap approximation to super-sample covariance (SSC) ...
In this thesis I present a scalable approach to distribution-to-distribution regression on large, mu...
We present a continuation of an analysis that aims to quantify resolution of $N$-body simulations by...
We present a numerically cheap approximation to super-sample covariance (SSC) of large-scale structu...
The standard approach to inference from cosmic large-scale structure data employs summary statistics...
We present a continuation of an analysis that aims to quantify resolution of $N$-body simulations by...
Dark Energy Spectroscopic Instrument (DESI) will construct a large and precise three-dimensional map...
International audienceMany statistical models in cosmology can be simulated forwards but have intrac...