相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。KiDS-1000 cosmology: Cosmic shear constraints and comparison between two point statistics
Marika Asgari et al.
ASTRONOMY & ASTROPHYSICS (2021)
Likelihood-free inference with neural compression of DES SV weak lensing map statistics
Niall Jeffrey et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2021)
Normalizing Flows: An Introduction and Review of Current Methods
Ivan Kobyzev et al.
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE (2021)
Dark energy survey internal consistency tests of the joint cosmological probes analysis with posterior predictive distributions
C. Doux et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2021)
A Bayesian interpretation of inconsistency measures in cosmology
Weikang Lin et al.
JOURNAL OF COSMOLOGY AND ASTROPARTICLE PHYSICS (2021)
In the realm of the Hubble tension-a review of solutions *
Eleonora Di Valentino et al.
CLASSICAL AND QUANTUM GRAVITY (2021)
Unconstrained representation of orthogonal matrices with application to common principal components
Luca Bagnato et al.
COMPUTATIONAL STATISTICS (2021)
Cosmic Distances Calibrated to 1% Precision with Gaia EDR3 Parallaxes and Hubble Space Telescope Photometry of 75 Milky Way Cepheids Confirm Tension with ?CDM
Adam G. Riess et al.
ASTROPHYSICAL JOURNAL LETTERS (2021)
Planck 2018 results: VI. Cosmological parameters
N. Aghanim et al.
ASTRONOMY & ASTROPHYSICS (2020)
Accelerated Bayesian inference using deep learning
Adam Moss
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2020)
Planck 2018 results: V. CMB power spectra and likelihoods
N. Aghanim et al.
ASTRONOMY & ASTROPHYSICS (2020)
Quantifying Suspiciousness within correlated data sets
Pablo Lemos et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2020)
Concordance cosmology?
Youngsoo Park et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2020)
Flow-based likelihoods for non-Gaussian inference
Ana Diaz Rivero et al.
PHYSICAL REVIEW D (2020)
Quantifying concordance of correlated cosmological data sets
Marco Raveri et al.
PHYSICAL REVIEW D (2020)
A new measure of tension between experiments
Saroj Adhikari et al.
JOURNAL OF COSMOLOGY AND ASTROPARTICLE PHYSICS (2019)
Concordance and discordance in cosmology
Marco Raveri et al.
PHYSICAL REVIEW D (2019)
Quantifying tensions in cosmological parameters: Interpreting the DES evidence ratio
Will Handley et al.
PHYSICAL REVIEW D (2019)
Conservative cosmology: combining data with allowance for unknown systematics
Jose Luis Bernal et al.
JOURNAL OF COSMOLOGY AND ASTROPARTICLE PHYSICS (2018)
Neutrino mass priors for cosmology from random matrices
Andrew J. Long et al.
PHYSICAL REVIEW D (2018)
Dark Energy Survey year 1 results: Cosmological constraints from galaxy clustering and weak lensing
T. M. C. Abbott et al.
PHYSICAL REVIEW D (2018)
CFHTLenS revisited: assessing concordance with Planck including astrophysical systematics
Shahab Joudaki et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2017)
Cosmological discordances: A new measure, marginalization effects, and application to geometry versus growth current data sets
Weikang Lin et al.
PHYSICAL REVIEW D (2017)
Planck data versus large scale structure: Methods to quantify discordance
Tom Charnock et al.
PHYSICAL REVIEW D (2017)
Quantifying concordance in cosmology
Sebastian Seehars et al.
PHYSICAL REVIEW D (2016)
Are cosmological data sets consistent with each other within the Λ cold dark matter model?
Marco Raveri
PHYSICAL REVIEW D (2016)
CosmoSIS: Modular cosmological parameter estimation
J. Zuntz et al.
ASTRONOMY AND COMPUTING (2015)
Compatibility of Planck and BICEP2 results in light of inflation
Jerome Martin et al.
PHYSICAL REVIEW D (2014)
Internal robustness: systematic search for systematic bias in SN Ia data
Luca Amendola et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2013)
Multimodal nested sampling: an efficient and robust alternative to Markov Chain Monte Carlo methods for astronomical data analyses
F. Feroz et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2008)
Bayesian evidence as a tool for comparing datasets
P Marshall et al.
PHYSICAL REVIEW D (2006)
Combining cosmological data sets: hyperparameters and Bayesian evidence
MP Hobson et al.
MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY (2002)