The new generation of galaxy surveys will provide unprecedented data allowing us to test gravity at cosmological scales. A robust cosmological analysis of the large-scale structure demands exploiting the nonlinear information encoded in the cosmic web. Machine Learning techniques provide such tools, however, do not provide a priori assessment of uncertainties. This study aims at extracting cosmological parameters from modified gravity (MG) simulations through deep neural networks endowed with uncertainty estimations. We implement Bayesian neural networks (BNNs) with an enriched approximate posterior distribution considering two cases: one with a single Bayesian last layer (BLL), and another one with Bayesian layers at all levels (FullB). We...
We train deep learning models on thousands of galaxy catalogues from the state-of-the-art hydrodynam...
We present a convolutional neural network to classify distinct cosmological scenarios based on the s...
Measuring the structural parameters (size, total brightness, light concentration, etc.) of galaxies ...
Simulation-based inference (SBI) is rapidly establishing itself as a standard machine learning techn...
We develop a pipeline to set new constraints on scale-independent modified gravity, from the galaxy ...
Based on the DUSTGRAIN-pathfinder suite of simulations, we investigate observational degeneracies be...
Context: Analyzing the large-scale structure (LSS) with galaxy surveys demands accurate structure fo...
We implement EuclidEmulator (version 1), an emulator for the non-linear correction of the matter pow...
Based on the DUSTGRAIN-pathfinder suite of simulations, we investigate observational degeneracies be...
The main goal of this Thesis work is to test Machine Learning techniques for cosmological analyses. ...
We present a novel approach for estimating cosmological parameters, $\Omega_m$, $\sigma_8$, $w_0$, a...
Cosmology during the last few decades has experienced an influx of new theory and observations, pus...
In this thesis work we exploited two alternative ML-based techniques to put constraints on the matte...
We assess a neural network (NN) method for reconstructing 3D cosmological density and velocity field...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train deep learning models on thousands of galaxy catalogues from the state-of-the-art hydrodynam...
We present a convolutional neural network to classify distinct cosmological scenarios based on the s...
Measuring the structural parameters (size, total brightness, light concentration, etc.) of galaxies ...
Simulation-based inference (SBI) is rapidly establishing itself as a standard machine learning techn...
We develop a pipeline to set new constraints on scale-independent modified gravity, from the galaxy ...
Based on the DUSTGRAIN-pathfinder suite of simulations, we investigate observational degeneracies be...
Context: Analyzing the large-scale structure (LSS) with galaxy surveys demands accurate structure fo...
We implement EuclidEmulator (version 1), an emulator for the non-linear correction of the matter pow...
Based on the DUSTGRAIN-pathfinder suite of simulations, we investigate observational degeneracies be...
The main goal of this Thesis work is to test Machine Learning techniques for cosmological analyses. ...
We present a novel approach for estimating cosmological parameters, $\Omega_m$, $\sigma_8$, $w_0$, a...
Cosmology during the last few decades has experienced an influx of new theory and observations, pus...
In this thesis work we exploited two alternative ML-based techniques to put constraints on the matte...
We assess a neural network (NN) method for reconstructing 3D cosmological density and velocity field...
We train convolutional neural networks to correct the output of fast and approximate N-body simulati...
We train deep learning models on thousands of galaxy catalogues from the state-of-the-art hydrodynam...
We present a convolutional neural network to classify distinct cosmological scenarios based on the s...
Measuring the structural parameters (size, total brightness, light concentration, etc.) of galaxies ...