We present a set of maps classifying regions of the sky according to their information gain potential as quantified by Fisher information. These maps can guide the optimal retrieval of relevant physical information with targeted cosmological searches. Specifically, we calculated the response of observed cosmic structures to perturbative changes in the cosmological model and we charted their respective contributions to Fisher information. Our physical forward-modeling machinery transcends the limitations of contemporary analyses based on statistical summaries to yield detailed characterizations of individual 3D structures. We demonstrate this advantage using galaxy counts data and we showcase the potential of our approach by studying the inf...
International audienceConventional approaches to cosmology inference from galaxy redshift surveys ar...
In this thesis, we showcase four novel approaches to constraining the relationship between cosmologi...
We train deep learning models on thousands of galaxy catalogues from the state-of-the-art hydrodynam...
The emergence of cosmic structure is commonly considered one of the most complex phenomena in nature...
We present an implicit likelihood approach to quantifying cosmological information over discrete cat...
International audienceWe introduce a decision scheme for optimally choosing a classifier, which segm...
The standard model of cosmology describes the complex large scale structure of the Universe through ...
International audienceRecent application of the Bayesian algorithm \textsc{borg} to the Sloan Digita...
A key objective of modern cosmology is to determine the composition and distribution of matter in th...
Observations of redshift-space distortions in spectroscopic galaxy surveys offer an attractive metho...
Beyond the linear regime, Fourier modes of cosmological random fields become corre-lated, and the po...
International audienceThe future 21 cm intensity mapping observations constitute a promising way to ...
Surveys of the cosmic large-scale structure carry opportunities for building and testing cosmologica...
International audienceCompressing large data sets to a manageable number of summaries that are infor...
In this thesis the minimum spanning tree (MST) is developed to infer cosmological parameters from fu...
International audienceConventional approaches to cosmology inference from galaxy redshift surveys ar...
In this thesis, we showcase four novel approaches to constraining the relationship between cosmologi...
We train deep learning models on thousands of galaxy catalogues from the state-of-the-art hydrodynam...
The emergence of cosmic structure is commonly considered one of the most complex phenomena in nature...
We present an implicit likelihood approach to quantifying cosmological information over discrete cat...
International audienceWe introduce a decision scheme for optimally choosing a classifier, which segm...
The standard model of cosmology describes the complex large scale structure of the Universe through ...
International audienceRecent application of the Bayesian algorithm \textsc{borg} to the Sloan Digita...
A key objective of modern cosmology is to determine the composition and distribution of matter in th...
Observations of redshift-space distortions in spectroscopic galaxy surveys offer an attractive metho...
Beyond the linear regime, Fourier modes of cosmological random fields become corre-lated, and the po...
International audienceThe future 21 cm intensity mapping observations constitute a promising way to ...
Surveys of the cosmic large-scale structure carry opportunities for building and testing cosmologica...
International audienceCompressing large data sets to a manageable number of summaries that are infor...
In this thesis the minimum spanning tree (MST) is developed to infer cosmological parameters from fu...
International audienceConventional approaches to cosmology inference from galaxy redshift surveys ar...
In this thesis, we showcase four novel approaches to constraining the relationship between cosmologi...
We train deep learning models on thousands of galaxy catalogues from the state-of-the-art hydrodynam...