1
Constraints on Dark Matter Properties from Observations of Milky Way Satellite Galaxies.
2
Likelihood-free inference with neural compression of DES SV weak lensing map statistics
3
Matter trispectrum: theoretical modelling and comparison to N-body simulations
4
Nearest neighbour distributions: New statistical measures for cosmological clustering
5
Completed SDSS-IV extended Baryon Oscillation Spectroscopic Survey: Cosmological implications from two decades of spectroscopic surveys at the Apache Point Observatory
6
The diversity and variability of star formation histories in models of galaxy evolution
7
Teaching Neural Networks to Generate Fast Sunyaev–Zel’dovich Maps
8
Interpreting deep learning models for weak lensing
9
Removing Astrophysics in 21 cm Maps with Neural Networks
10
The DIANOGA simulations of galaxy clusters: characterising star formation in protoclusters
11
Supermassive black holes in cosmological simulations I: MBH − M⋆ relation and black hole mass function
12
Galaxy bias and primordial non-Gaussianity: insights from galaxy formation simulations with IllustrisTNG
13
New interpretable statistics for large-scale structure analysis and generation
14
The Horizon Run 5 Cosmological Hydrodynamical Simulation: Probing Galaxy Formation from Kilo- to Gigaparsec Scales
15
Combining full-shape and BAO analyses of galaxy power spectra: a 1.6% CMB-independent constraint on H0
16
Using the Marked Power Spectrum to Detect the Signature of Neutrinos in Large-Scale Structure.
17
Super-resolution emulator of cosmological simulations using deep physical models
18
Cosmological parameters and neutrino masses from the final
Planck
and full-shape BOSS data
19
Primordial non-Gaussianity without tails – how to measure fNL with the bulk of the density PDF
20
Fisher for complements: extracting cosmology and neutrino mass from the counts-in-cells PDF
21
The impact of quenching on galaxy profiles in the simba simulation
22
Jet feedback and the photon underproduction crisis in simba
23
Galaxy power spectrum multipoles covariance in perturbation theory
24
Cosmological baryon transfer in the simba simulations
25
Constraining Mν with the bispectrum. Part I. Breaking parameter degeneracies
26
A Hybrid Deep Learning Approach to Cosmological Constraints from Galaxy Redshift Surveys
27
Cosmological simulations of galaxy formation
28
The cosmological analysis of the SDSS/BOSS data from the Effective Field Theory of Large-Scale Structure
29
The Quijote Simulations
30
Cosmological parameters from the BOSS galaxy power spectrum
31
The AREPO Public Code Release
32
Constraining the astrophysics and cosmology from 21 cm tomography using deep learning with the SKA
33
The dust-to-gas and dust-to-metal ratio in galaxies from z = 0 to 6
34
Cosmological constraints with deep learning from KiDS-450 weak lensing maps
35
Exploring the effects of galaxy formation on matter clustering through a library of simulation power spectra
36
Modelling baryonic feedback for survey cosmology
37
Black hole – Galaxy correlations in simba
38
Separate Universe simulations with IllustrisTNG: baryonic effects on power spectrum responses and higher-order statistics
39
Nuisance hardened data compression for fast likelihood-free inference
40
First results from the TNG50 simulation: the evolution of stellar and gaseous discs across cosmic time
41
Weak lensing cosmology with convolutional neural networks on noisy data
42
simba: Cosmological simulations with black hole growth and feedback
43
The IllustrisTNG simulations: public data release
44
Learning to predict the cosmological structure formation
45
Quantifying baryon effects on the matter power spectrum and the weak lensing shear correlation
46
The promising future of a robust cosmological neutrino mass measurement
48
Non-Gaussian information from weak lensing data via deep learning
49
Galaxy power-spectrum responses and redshift-space super-sample effect
50
Stellar Dynamics and Star Formation Histories of z ∼ 1 Radio-loud Galaxies
51
Distribution and Evolution of Metals in the Magneticum Simulations
53
FIRE-2 simulations: physics versus numerics in galaxy formation
54
Cosmic evolution of stellar quenching by AGN feedback: clues from the Horizon-AGN simulation
55
GRACKLE: a chemistry and cooling library for astrophysics
56
Simulating galaxy formation with black hole driven thermal and kinetic feedback
57
MUFASA: Galaxy Formation Simulations With Meshless Hydrodynamics
58
The BAHAMAS project: Calibrated hydrodynamical simulations for large-scale structure cosmology
59
THE IMPACT OF STELLAR FEEDBACK ON THE STRUCTURE, SIZE, AND MORPHOLOGY OF GALAXIES IN MILKY-WAY-SIZED DARK MATTER HALOS
60
The BlueTides simulation: first galaxies and reionization
61
Gusty, gaseous flows of FIRE: Galactic winds in cosmological simulations with explicit stellar feedback
62
The impact of galactic feedback on the circumgalactic medium
63
Physical Models of Galaxy Formation in a Cosmological Framework
64
A new class of accurate, mesh-free hydrodynamic simulation methods
65
The EAGLE project: Simulating the evolution and assembly of galaxies and their environments
66
Properties of galaxies reproduced by a hydrodynamic simulation
67
Deep learning in neural networks: An overview
68
The Coevolution of Galaxies and Supermassive Black Holes: Insights from Surveys of the Contemporary Universe
69
Dancing in the dark: galactic properties trace spin swings along the cosmic web
70
Super-Sample Covariance in Simulations
71
Galaxies on FIRE (Feedback In Realistic Environments): stellar feedback explains cosmologically inefficient star formation
72
A model for cosmological simulations of galaxy formation physics: multi-epoch validation
73
On the evolution of the H i column density distribution in cosmological simulations
74
RADIATIVE AND MOMENTUM-BASED MECHANICAL ACTIVE GALACTIC NUCLEUS FEEDBACK IN A THREE-DIMENSIONAL GALAXY EVOLUTION CODE
75
Observational Evidence of Active Galactic Nuclei Feedback
76
RADIATIVE TRANSFER IN A CLUMPY UNIVERSE. IV. NEW SYNTHESIS MODELS OF THE COSMIC UV/X-RAY BACKGROUND
77
The effects of galaxy formation on the matter power spectrum: a challenge for precision cosmology
78
A COMPARISON OF METHODS FOR DETERMINING THE MOLECULAR CONTENT OF MODEL GALAXIES
79
An analytic model of angular momentum transport by gravitational torques: from galaxies to massive black holes
80
Feedback and recycled wind accretion: assembling the z= 0 galaxy mass function
81
Ahf: AMIGA'S HALO FINDER
82
Chemical enrichment in cosmological, smoothed particle hydrodynamics simulations
83
E pur si muove: Galilean-invariant cosmological hydrodynamical simulations on a moving mesh
84
The effect of thermal neutrino motion on the non-linear cosmological matter power spectrum
85
A unified model for AGN feedback in cosmological simulations of structure formation
86
Initial Conditions to Cosmological N-Body Simulations, or, How to Run an Ensemble of Simulations
87
The Elements of Statistical Learning: Data Mining, Inference, and Prediction
88
Cosmological smoothed particle hydrodynamics simulations: a hybrid multiphase model for star formation
89
On the Reliability of Initial Conditions for Dissipationless Cosmological Simulations
90
Populating a cluster of galaxies - I. Results at z=0
91
The Global Schmidt law in star forming galaxies
92
Statistical Properties of X-Ray Clusters: Analytic and Numerical Comparisons
93
Bayesian Neural Networks
94
Cosmological Simulations with TreeSPH
95
The evolution of large-scale structure in a universe dominated by cold dark matter
96
Groups of galaxies. I. Nearby groups
97
On spherically symmetrical accretion
99
MNRAS , 364 , 1105 , [ arXiv : astro - ph / 0505010 ] — —
100
The Elements of Statistical Learning: Data Mining, Inference, and Prediction
101
Bayesian training of backpropagation networks by the hybrid Monte-Carlo method
102
Submitted to ApJ Preprint typeset using L ATEX style emulateapj v. 10/09/06 A NEW CALCULATION OF THE IONIZING BACKGROUND SPECTRUM AND THE EFFECTS OF HEII REIONIZATION
103
ConvTranspose2d: 64 channels x 16 x 16; kernel=4, stride=2
104
(2011) and references to it for further details on convolutional autoencoders. 1. Input: image with 1 channel x 64 x 64 2. Conv2d: 32 channels x 32 x 32